WO1996003716A1 - Image identifying apparatus - Google Patents

Image identifying apparatus Download PDF

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Publication number
WO1996003716A1
WO1996003716A1 PCT/JP1994/001200 JP9401200W WO9603716A1 WO 1996003716 A1 WO1996003716 A1 WO 1996003716A1 JP 9401200 W JP9401200 W JP 9401200W WO 9603716 A1 WO9603716 A1 WO 9603716A1
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WO
WIPO (PCT)
Prior art keywords
image data
data
digital image
color
target image
Prior art date
Application number
PCT/JP1994/001200
Other languages
French (fr)
Inventor
Toshio Sato
Teruhiko Uno
Toshio Hirasawa
Hiroshi Takahashi
Kazuyo Nakagawa
Original Assignee
Kabushiki Kaisha Toshiba
Priority date (The priority date is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the date listed.)
Filing date
Publication date
Application filed by Kabushiki Kaisha Toshiba filed Critical Kabushiki Kaisha Toshiba
Priority to DE69428293T priority Critical patent/DE69428293T2/en
Priority to US08/765,814 priority patent/US6047085A/en
Priority to JP8505634A priority patent/JPH10503307A/en
Priority to EP94921796A priority patent/EP0804777B1/en
Priority to PCT/JP1994/001200 priority patent/WO1996003716A1/en
Publication of WO1996003716A1 publication Critical patent/WO1996003716A1/en

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    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T7/00Image analysis
    • G06T7/90Determination of colour characteristics
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06VIMAGE OR VIDEO RECOGNITION OR UNDERSTANDING
    • G06V10/00Arrangements for image or video recognition or understanding
    • G06V10/40Extraction of image or video features
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T2207/00Indexing scheme for image analysis or image enhancement
    • G06T2207/10Image acquisition modality
    • G06T2207/10024Color image
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T2207/00Indexing scheme for image analysis or image enhancement
    • G06T2207/20Special algorithmic details
    • G06T2207/20092Interactive image processing based on input by user
    • G06T2207/20104Interactive definition of region of interest [ROI]

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  • Engineering & Computer Science (AREA)
  • Physics & Mathematics (AREA)
  • General Physics & Mathematics (AREA)
  • Theoretical Computer Science (AREA)
  • Multimedia (AREA)
  • Computer Vision & Pattern Recognition (AREA)
  • Image Analysis (AREA)
  • Image Processing (AREA)

Abstract

Apparatus and method for identifying the color image of an object. The object's image is digitized and a cut-off portion of the image containing the object is determined. The cut-off portion image data is normalized. Selected pixels of the normalized image are subjected to an averaging process to provide an averaged image containing R, G, and B color components. H, V, and C components of the averaged image data are computed, and their V, c, and d components are computed from the H, V, and C components. A color feature extractor computes from the c and d component data a parameter representative of the object to be identified. This parameter is provided to a memory controller to retrieve from a memory that stores target images one or more images categorized according to the computed parameter. A matching section matches each retrieved target image with the Vcd component data and determines which target image is most similar.

Description

D E S C R I P T I O N
"IMAGE IDENTIFYING APPARATUS"
Field of the Invention
The invention relates in general to image identifying apparatus and, more particularly, to image identifying apparatus capable of identifying color images and patterns with precision and speed. Description of the Related Art
Japanese Patent Application (TOKU-KAI-HEI) 04-54681 discloses a method for detecting and identifying a spe¬ cific object from among unspecified objects using color images. This method includes preparing a frequency distribution pattern from color images and detecting and identifying a bank note by comparing the frequency dis¬ tribution pattern with a reference pattern- Japanese Patent Application (TOKU-GAN-HEI) 5-176962 discloses a method for identifying a color image by averaging its secondary pattern and comparing it with a standard pattern.
In conventional color image identifying methods, such as a identifying method which compares a frequency distribution pattern of a color image with reference patterns or an identifying method in which a color pattern is averaged and compared with standard patterns, it is necessary to make a comparison with all of the available registered standard patterns. Therefore, sub¬ stantial time is required for making the comparison if there are a substantial number of standard patterns, so that it is difficult to make an identification at high speed.
Summary of the Invention Accordingly, the invention is directed to an image identifying apparatus that substantially obviates one or more of the problems due to limitations and disadvan- tages of the related art.
To achieve the advantages of the invention and in accordance with the purpose of the invention, as embodied and broadly described, the invention is directed to apparatus for identifying an image repre- sented by digital image data. The apparatus includes means for extracting from the digital image data feature data corresponding to predetermined features of the image to be identified; a memory to store target image data representative of at least one target image; means, responsive to the extracting means, for retrieving from the memory target image data in accordance with the extracted feature data; and means for determining a similarity between the digital image data and the retrieved target image data. Also in accordance with the present invention, there is provided apparatus for identifying an image represented by digital image data. The apparatus includes a first circuit, coupled to receive predeter¬ mined portions of the digital image data, to compute a category parameter representative of the predetermined portions; a memory to store target image data represen- tative of at least one target image; a memory controller, coupled to the memory and to receive the category parameter, to retrieve from the memory target image data corresponding to the category parameter; and a second circuit, coupled to receive the digital image data and the retrieved target image data, to determine a similarity parameter representative of a similarity between the digital image data and target image data. Further in accordance with the present, there is provided a method for identifying an image represented by digital image data. The method includes the steps of extracting from the digital image data predetermined features of the image to be identified; retrieving from a memory target image data representative of at least one target image, in accordance with the extracted predetermined features; and determining a similarity between the digital image data and the retrieved target image data.
Brief Description of the Drawings The accompanying drawings, which are incorporated in and constitute a part of the specification, illus¬ trate embodiments of the invention and, together with the general description of the invention given above and the detailed description of the embodiments given below, serve to explain the objects, advantages, and principles of the invention.
Figure 1 is a block diagram of an image identifying apparatus of a first embodiment of the invention.
Figure 2 is an illustration of an example of an object to be picked up by a color image input section.
Figure 3 is a diagram of an example of the arrange¬ ment of color image data stored in an image data storage section.
Figure 4 is a diagram of an example of the arrange¬ ment of one color component' data of the color image data stored in the image data storage section.
Figure 5 is a diagram of an example of data arrangement for determining the position of an object to be recognized by an object detection/cut-off section and cumulative image data in the vertical and horizontal directions.
Figure 6 is an illustration showing identification of four corners of an object to be recognized.
Figure 7 is a block diagram of the object detection/cut-off section.
Figure 8 is a diagram of an example of the arrange¬ ment of one color component data of color image data converted to a fixed size.
Figure 9 is a diagram of the arrangement of data stored in a normalizing converter as a processed result. Figure 10 is a block diagram of the normalizing converter.
Figure 11 is a diagram of 70 sample point pixels sampled by an image averaging section. Figure 12 is a diagram of neighborhood pixel weigh¬ ing factors used by the image averaging section.
Figure 13 is a diagram of an example of the processed result output from the image averaging section. Figure 14 is a diagram of an example of the arrangement of averaged input data stored in the image averaging section.
Figure 15 is a block diagram of the image averaging section. Figure 16 is a conceptual graphical representation of vulue/hue/chromvalues that are converted by a value/hue/chroma converter.
Figure 17 is an illustration of a neural network for conversion of RGB values. Figure 18 is an illustration of a computational arrangement used to determine weight factors.
Figure 19 is a table of data used in the conversion of RGB values.
Figure 20 is a block diagram of the value/hue/chroma converter.
Figure 21 is a diagram of color data.
Figure 22 is a block diagram of a color feature extracto .
Figure 23A illustrates an example of a data format used in a dictionary data storage section.
Figure 23B is a block diagram of a dictionary data controller and the dictionary data storage section.
Figure 24 is a diagram of an example of a color image recognized by a pattern matching section.
Figure 25 is a diagram of an example of one category of dictionary data used in the pattern matching section.
Figure 26 is a block diagram of the pattern match¬ ing section.
Figure 27 is a block diagram showing an alternate construction of the pattern matching section. Figure 28 is a block diagram of an image identify¬ ing apparatus of a second embodiment of the invention.
Figure 29 is a conceptional drawing showing the range of data classified by the color feature extractor in the second embodiment. Figure 30 is a block diagram of the color feature extractor in the second embodiment.
Figure 31 is a diagram of an example of the arrangement of data stored in the dictionary data storage section in the second embodiment. Figure 32 is a block diagram of an image identify¬ ing apparatus of a third embodiment of the invention.
Figure 33 is a diagram of an example of a catalog containing an object to be recognized.
Figure 34 is a diagram of an example of the arrangement of data stored in a data base of the third embodiment. Figure 35A is an illustration of an example of the screen displayed on a display unit of the third embodiment.
Figure 35B is an illustration of another example of the screen displayed on the display unit of the third embodiment.
Figure 36 is a block diagram of an image identify¬ ing apparatus of a fourth embodiment of the invention.
Figure 37 is an illustration of an example of a postal stamp to be identified. Figure 38 illustrates an example of a data format used in a dictionary data storage section of the fourth embodiment.
Figure 39 is a block diagram of another construc¬ tion of a color feature extractor. Figure 40 is a block diagram of yet another construction of a color feature extractor.
Detailed Description of the Preferred Embodiments Hereinafter, preferred embodiments of the invention will be described with reference to the drawings. Figure 1 is a block diagram showing the construc¬ tion of an image identifying apparatus 100 of a first embodiment of the present invention. Apparatus 100 includes a color television camera ("TV camera") 102 for providing an analog signal representing a color image of an object P to be identified, a color image input sec¬ tion 104 coupled to receive the analog image signal from TV camera 102, and an image data storage section 106 coupled to an output of input section 104. Apparatus 100 also includes an object detection/cut-off section 108 coupled to an output of storage section 106, a nor¬ malizing converter 110 coupled to an output of section 108, and an image averaging section 112 coupled to an output of section 110. Apparatus 100 further includes a value/hue/chroma converter 114 coupled to an output of section 112, a color feature extractor 116 coupled to an output of converter 114, and a dictionary data storage section 118 for storing reference data coupled to an output of a dictionary data controller 120. Controller 120 of apparatus 100 is coupled to an output of extrac¬ tor 116 and to section 118 to perform read, write and control functions with respect to section 118. Apparatus 100 also includes a pattern matching section 122 for performing comparing and discriminating functions, which is coupled to outputs of both of converter 114 and controller 120. Further, an identifi¬ cation result output section 124 is coupled to an output of section 122.
Figure 2 illustrates an object to be identified. For example, included in an overall image 200 is a scene image 202 printed in at least two color components mounted on a background 204, for example, a white, shaded, or black background.
Next, the various elements of image identifying apparatus 100 are described in detail.
A color image of the object P (Figure 1), such as scene image 202 to be identified and a portion of the overall image 200 within which the object P is included, is imaged by TV camera 102, which provides an analog image signal of the color image to color image input section 104. Section 104 includes conventional cir¬ cuitry for digitizing the image signal and provides digital color image data corresponding to the analog image signal to image data storage section 106 for storage. In this embodiment, storage section 106 is a RAM, and the digitized color image is stored in image data storage section 106 in a memory arrangement of, for example, 512 pixels in the horizontal image direction and 512 pixels in the vertical image direction as R (red), G (green) and B (blue) images ("RGB image") in one byte per pixel per R, G, and B image. Figure 3 illustrates an example of the format of the R, G, and B data stored in section 106.
Object detection/cut-off section 108 determines the extent of an object to be identified within an overall image, from the RGB image data stored in image data storage section 106. Object detection/cut-off section 108 performs this function by computing cumulative data for the pixels of a binary image in the vertical and horizontal directions. For example, sec¬ tion 108 executes a thresholding process using a fixed threshold value THR (e.g., 5) for one color component.
Figure 4 illustrates an example of the image data of the G component of the RGB image data stored in the form illustrated in Figure 3.
Figure 5 illustrates an example of the data com- puted by the thresholding process when performed on the G component data illustrated in Figure 4. As illus¬ trated in Figure 5, section 108 computers a "1" or "0" bit for each pixel of the G component image data depend¬ ing on whether the G component for that pixel is or is not greater than THR. Cumulative data representing the number of "1" bits in each row and column of pixels is determined. Such cumulative data is shown in Figure 5 below and to the left of the thresholding process results. By obtaining the connection starting points and terminating points of the cumulative data, which are not "0", i.e., xss, xse, yss and yse (shown in Figure 5) in the vertical and horizontal directions, respectively, the object detection/cut-off section 108 obtains coordinate data of four corners Ml, M2, M3 and M4 of the object to be identified. In particular, Ml corresponds to (xss, yss), M2 corresponds to (xse, yss), M3 corre¬ sponds to (xss, yse), and M4 corresponds to (xse, yse). Figure 6 illustrates these four corners determined by section 108 for scene image 202.
Figure 7 illustrates a block diagram of a construc¬ tion of the object detection/cut-off section 108. An RGB image is read from the image storage section 106 according to an address signal ADR1 that is output by a buffer controller 702, and the respective R, G, and B components are written into an R image buffer 704, a G image buffer 706, and a B image buffer 708. At the same time, a threshold processor 710 sets at "1" only pixels which have a value above THR for a G image. A vertical pixel cumulative section 712 and a horizontal pixel cumulative section 714 each comprise a counter selected by the address signal ADR1. The count value of each section 712 and 714 is increased by one in each case of a pixel value "1" for the vertical and horizontal addresses of each column and row of pixels, respective¬ ly*
Upon completion of the thresholding process of the entire image, starting point detectors 716 and 718 and terminating point detectors 720 and 722 detect both ends of the count values of the vertical pixel cumulative section 712 and the horizontal pixel cumulative section 714, which are other than 0, and obtain the connection starting and terminating points xss, xse, yss and yse at the four corners (Ml, M2, M3, M4) of the image to be identified. Use of the G component image data for processing in section 108 is preferred because the G component is close to the center of the visible spectrum and, therefore, is more representative of intensity data. Those skilled in the art will recognize that the use of a different component or characteristic of the image data from processing in section 108 may be suitable as a function of the type of image to be identified.
Using the coordinate data of the four corners Ml, M2, M3, and M4 of the image to be identified, which have been detected by the object detection/cut-off section 108, the normalizing converter 110 normalizes sizes of image data within a range defined by the four corners. For example, to normalize a color image of hr(x,y), hg(x,y) and hb(x,y) of an image to be identified, which has been received from section 108, to an image of mr(x,y), mg(x,y) and mb(x,y) in arbitrarily defined vertical xst pixels and horizontal yst pixels, conver¬ sions defined in the following set of equations (1) are executed: mr( (X-XΞΞ)*xst/ (xse-xss+1 ) , (y-yss)*yst/(yse-yss+l) )
= hr(x, y) mg( (x-xss)*xst/(xse-xss+l) , (y-yss)*yst/(yse-yss+l) )
= hg(x, y) (1) mb( (x-xss)*xst/(xse-xss+l) , (y-yss *yst/ (yse-yss+1 ) ) = hb(x, y)
wherein, x and y are integer values of the coordinates of the normalized image, xss < x < xse, and yss _< y yse .
Results of the normalizing operations made on respective coordinates are provided as integers.
Figure 8 illustrates data resulting from normaliz- ing the G color component data shown in Figure 4. The data in Figure 8 is based on the coordinate data xss, xse, yss and yse of the image to be identified, deter¬ mined by object detection/cut-off section 108, when image data of the G color component illustrated in Figure 4 is normalized for yst = 28 and xst = 19. The normalizing process is executed for each of the three component images of R, G, and B image data and stored in the normalizing converter 110 in a data format such as that illustrated in Figure 9. Figure 10 illustrates a block diagram of a con¬ struction of the normalizing converter 110. Normalizing converter 110 includes a buffer controller 1002 that outputs an address signal ADR3. An address converter 1004 converts signal ADR3 into an address signal ADR2, which designates x and y in equation (1) described above. Signal ADR2 is applied to buffers 704, 706, and 708 of section 108 to retrieve the image data stored in those buffers. The retrieved image data is written into an R image buffer 1006, a G image buffer 1008, and a B image buffer 1010, respectively, as designated by the new address signal ADR3 while reading RGB image data equivalent to that address from buffers 704, 706, and 708 .
Next, in the image averaging section 112, the RGB image normalized in normalizing converter 110 and stored in buffers 1006, 1008 and 1010 is converted into an RGB image having a shaded pixel averaged construction. More particularly, Figure 11 illustrates the selection of 70 sample pixels, numbered 1-70 among the pixels for which data is stored in buffers 1006, 1008, and 1010. A weighted neighborhood average pixel value will be com- puted for the sample pixels. Figure 12 illustrates an exemplary neighborhood of 5χ5 pixels for one of the 70 sample pixels and the weighing factors applied to the values of the pixels in the neighborhood. The result of this averaging process is to compute the pixel value of an averaged image of 7 horizontal pixels and 10 vertical pixels consisting only of the computed weighted neigh¬ borhood average values of the 70 sample pixels.
At this time, although the areas outside the image sample data provided by normalizing converter 110 are included in the range for averaging, data for peripheral pixels at the periphery of the image area in Figure 11 are calculated using a pixel value "0" for the areas outside the image area. Also, for each of the 70 sample pixels, after a total weighted sum of the pixels in the 5χ5 neighborhood is computed, the sum is divided by 18, which is the sum of the weighing factors shown in Figure 12. Figure 13 illustrates the averaged image data resulting from this averaging process for the sam¬ ple pixel values shown in Figure 8. The averaged image data is computed for the image data stored in section 110 for each of the RGB colors. Figure 14 illustrates an example of the averaged image data for each of the RGB colors stored in image averaging section 112.
Figure 15 illustrates a block diagram of a con¬ struction of image averaging section 112. Image averaging section 112 includes three processors: an R image averaging processor 1502, a G image averaging processor 1504, and a B image averaging processor 1506. Since these three processors have substantially the same construction, only the construction of R image averaging processor 1502 is described in detail. With reference to Figure 15, processor 1502 includes a buffer control¬ ler 1508 that generates address signals ADR4 , ADR5, and ADR6. A normalized R image is read from R image buffer 1006 of normalizing converter 110 by the address signal ADR4. Processor 1502 includes an R image buffer 1510 into which is written R image data read from buffer
1006. At this time, the normalized R image is stored in buffer 1510 in such a form that peripheral pixels are set at "0" as illustrated in Figure 11.
Processor 1502 also includes line buffers 1512, 1514, 1516, and 1518, which are connected in sequence to enable shifting pixel data from one line buffer to the next. Each line buffer is coupled to receive the address signal ADR5. Shift registers 1520, 1522, 1524, 1526, and 1528 are respectively connected to receive pixel image data stored in image buffer 1510 and line buffers 1512-1518, respectively. Each shift register can store pixel image data of five pixels. Sum-of- product arithmetic units 1530, 1532, 1534, 1536, and 1538 are respectively connected to receive pixel image data stored in shift registers 1520-1528, respectively. Each sum-of-products arithmetic unit is configured to multiply the pixel image data of the five pixels stored by the corresponding shift register by the neighborhood weighing factors illustrated in Figure 12 and compute a sum of the products. In Figure 15, the weighing factors of one row of pixels in a pixel neighborhood as applied by each sum-of-products arithmetic unit are shown.
These weighing factors have the same relative propor¬ tions as those shown in Figure 12 but are expressed as whole numbers. Thus, for example, unit 1534 applies the factors of the center row of the pixel neighborhood. An adder 1540 is connected to receive the sums respectively computed by units 1530-1538 and to add these sums to provide a sum A. A divider 1542 is con¬ nected to receive sum A and divide it by a value B equal to 36, which is the sum of the whole number weighing factors applied by units 1530-1538. An R image buffer
1544 is connected to receive the quotient A/B and stores it at an address specified by address signal ADR6. The address signals ADR6 correspond to the 70 sample pixels shown in Figure 11.
In the operation of image averaging section 112, buffer controller 1508 generates address signals ADR5 to retrieve from R image buffer 1510 pixel image data for pixels in the neighborhood of one of the 70 sample pixels in Figure 11. This neighborhood pixel data is transferred via buffer 1510 and l ne buffers 1512-1518 into shift re9isters 1520-1528, so that the shift regis- ters store the image data for the 5χ5 pixels of the neighborhood for one of the sample pixels. Then units 1530-1538, adder 1540, and divider 1542 compute the average pixel value for the particular sample pixel. The result is stored in buffer 1544 as a pixel of the averaged image in accordance with address signal ADR7.
It is noted that since image averaging section 112 can process image data in real time, image buffer 1510 is not required and image data as read from converter 110 can be directly processed in section 112.
In value/hue/chroma converter 114, averaged image data comprising 7 vertical pixels and 10 horizontal pixels for each R, G, and B color is converted to values based on orthogonal coordinates indicating H (hue), V (value) and C (chroma) values ( "HVC values") of the corrected Munsell system, which are widely used to rep¬ resent human color perception. More particularly, color data is expressed by three values V, c and d ( "Vcd value" ) , where V is the value component of the Munsell system, and c and d are arbitrarily defined. With ref¬ erence to Figure 16, each HVC value can be represented in polar-coordinate form on the hue(H)/chroma(C) surface. As a result, the values c and d are defined by converting an HC value in polar coordinates on the hue/chroma surface into values c and d using equation (2): c = cosH C + 128 d = sinH C + 128 (2)
In equation (2), the value 128 is added to the result to assure a positive result that can be repre¬ sented by 8 bit data. This conversion of RGB values into Vcd values can be accomplished by using, for example, a neural network. As diagrammatically illus¬ trated in Figure 17, such a neural network is composed of an input layers, an output layer, and an intermediate layer. The RGB values are received by the input layer and the Vcd values are provided by the output layer. In order to determine weight factors to be used in the respective units of the layers of the neural network, a study was made using a three layer neural network comprising seventeen units of an intermediate layer, three units of an input layer corresponding to R, G, and B colors, and three units of an output layer corresponding to v, c, and d values. Figure 18 illustrates a computational arrangement 1800 used to determine the weight factors of a neural network 1802. A Munsell conversion table 1804 provides Vcd components and xyY components corresponding to HVC values . The xyY components are known color components that correspond to RGB values and from which RGB values can be determined. Figure 19 illustrates a table of known data representing corresponding values of HVC and xyY values, available in Japanese Industrial Standard (JIS)Z8721.
In Figure 18, an arithmetic comparison unit 1806 converts the xyY values obtained from table 1804 to RGB values according to the following equations (3) and (4)and provides the RGB values to neural network 1802.
X = xY/y (3)
Z = (l - x - y)Y/y
R 1.9106 -0.5326 -2.883 X
G = -0.984 1.9984 -0.0283
B 0.0584 -0.1185 -0.8985 z Network 1802 computes Vcd values corresponding to the RGB values, based on current values of the weight factors of network 1802. A comparison unit 1808 com¬ pares the Vcd values computed by network 1802 with those from table 1804, and determines a conversion error of network 1802. This process is repeated so that network 1802 can learn the correct conversion by adjustment of weight factors. In practice, the learning process ended at approximately 10,000 cycles at which point the con¬ version error was 0.5 NBS, which is a unit of color difference. The NBS unit of color difference is more fully defined at pages 826-827 of "Color Science - Concepts and Methods, Quantitative Data and Formulae" by G. Wyszecki et al. , second edition, John Wiley & Sons, which is incorporated herein by reference.
The determination of weight factors for a neural network used to convert color image data is disclosed in U.S. Patent No. 5,162,899, which is incorporated herein by reference.
Value/hue/chro converter 114 converts RGB color images of 7 horizontal pixels and 10 vertical pixels into Vcd images of 7 horizontal pixels and 10 vertical pixels and stores the results.
Figure 20 illustrates a block diagram of a con¬ struction of value/hue/chroma section 114. Section 114 includes a buffer controller 2002, which outputs an address signal ADR7. Based on this address signal, RGB image data are read out of the image buffers of image averaging section 112. Section 114 also includes seven¬ teen sum-of-product arithmetic units 2010, 2012, ..., and 2014, each connected to receive the RGB image data from section 112. The three points of connection of each of the seventeen sum-of-products units to receive the R, G, and B image data represent the three units of the input layer of the neural network diagrammatically shown in Figure 17. Each sum-of-products unit performs a compu¬ tation having the form X = WJ_IR + W2IG + W3IB- where Wj_ , W2, and W3 are weight factors and IR, IG, and IB are the R, G, and B image data, respectively.
The results computed by the seventeen units 2010-2014 are provided to seventeen sigmoid function arithmetic units 2016, 2018, ..., and 2020. Each sigmoid function unit performs a computation having the form Sig(X) = 1/(1 + e_x), where X is the result com¬ puted by a corresponding sum-of-products unit. The seventeen sum-of-product units and seventeen sigmoid function units together form the intermediate layer of the neural network diagrammatically shown in Figure 17.
Three sum-of-product arithmetic units 2022, 2024, and 2026 are each connected to receive the results computed by the seventeen units 2016-2020. Sigmoid function arithmetic units 2028, 2030, and 2032 are con- nected to receive the results computed by units 2022,
2024, and 2026, respectively. Units 2022-2026 and units 2028-2032 together form the output layer of the neural network and perform computations having the same form as described for those of the intermediate layer. A V image buffer 2034, a c image buffer 2036, and a d image buffer 2038 are respectively connected to receive the results computed by units 2028, 2030, and 2032, such results being written into these buffers in accordance with address signal ADR7.
Here, the sum of products arithmetic units of the intermediate layers and the output layers have been provided in advance with weighted values of the neural network that were studied as illustrated in Figure 18.
From buffers 2034, 2036, and 2038 color feature extractor 116 reads color data representing image data computed by the value/hue/chroma converter 114. For example, in order to determine color features to be extracted, extractor 116 computes mean values of c and d values of image data that are computed by the value/hue/chroma converter 114. Figure 21 illustrates a plot of color data corresponding to R, YR, Y, GY, G, BG, B, PB, P, RP, and NC as a function of c and d. This breakdown of color data corresponds to the Munsell system and is disclosed in JIS Z8721, although the inventors herein are arbitrarily using components c and d. Depending on the computed mean values, the position where the image is located in the color data ranges illustrated in Figure 21 is output as color feature data, such as one of R, YR, Y, etc.
Figure 22 illustrates a block diagram of a con¬ struction of color feature extractor 116. Extractor 116 includes adders 2202 and 2204 connected to receive the c and d pixel image data, respectively, which data is stored in converter 114. This data is read from image buffers 2034, 2036, and 2038 of converter 114 for each of the 70 sample pixels in response to an address signal ADR8 generated by pattern matching section 122, as discussed below. Each of adders 2202 and 2204 is con- figured to compute a sum for the pixel image data for the 70 sample pixels. The sums computed by adders 2202 and 2204 are applied to dividers 2206 and 2208, each of which divides the sum applied to it by the total number of sample pixels, i.e., 70. As a result, dividers 2206 and 2208 compute mean values of c and d, respectively, for the image to be identified. A look-up table 2210 stores information corresponding to the color data illustrated in Figure 21.
The computed mean values of c and d are input as address signals and the look-up table 2210 outputs codes or numerical values corresponding to the inputted mean values, for example, 1 (R), 2 (YR) , 3 (Y) , 4 (G), 5 (G), 6 (BG), 7 (B), 8 (PB), 9 (P), 10 (PR) and 11 (NC).
Further, for features of colors extracted by the color feature extractor 116, data other than average hue and chroma data of the entire image may be used. For example, distributed values/central values of 70 pixel values f(x,y) of an averaged image, a pixel value of highest value, or a pixel value of lowest value can be used and are within the intent of the present invention.
Dictionary data controller 120 causes only a portion of the image data stored in dictionary data storage section 118 to be transmitted to the pattern matching section 122 and bases a selection of the trans¬ mitted portion on the color feature data output from color feature extractor 116. In dictionary data storage section 118, data corresponding to target or reference images have been stored at different storage locations according to color feature data codes computed by color feature extractor 116 when collecting dictionary data. The initial storage of this dictionary data is achieved in the same manner as described above concerning proc¬ essing the image to be identified using apparatus 100. Thus, each target reference image is imaged and processed so that Vcd image data output from the value/hue/chroma converter 114 for the target image are stored in the dictionary data storage section 118, which is controlled by the dictionary data controller 120, according to color feature data output from color feature extractor 116 for that target image. Figure 23A illustrates an example of the data format of storage section 118 in which the target image data is grouped by categories R, YR, Y, etc, corresponding to the color feature data that can be extracted by extractor section 116 as illustrated- in Figure 22. Figure 23B illustrates a construction of dictionary data controller 120 and dictionary data storage section 118. Storage section 118 includes a memory 2302 in which respective target images are stored in categories according to the color feature code outputs of extractor 116. In dictionary data controller 120, a decoder 2304 converts the color feature code output from color fea- ture extractor 116 for an image to be identified into, for example, the more significant address bits of memory 2302 in storage section 118. In response, Vcd image data of a target image of the category is output accord¬ ing to the color feature code specified by controlling the more significant address bits of the memory 2302.
An address controller 2306 of controller 120 is respon¬ sive to an address signal ADR9 from pattern matching section 122 to generate less significant address bits of memory 2302 to enable reading of successive target images within the category specified by the more significant address bits from decoder 2304. Controller 120 also includes an image data buffer 2308 that receives image data retrieved from storage section 118 for provision to pattern matching section 122. Pattern matching section 122 compares Vcd image data of an image to be identified as outputted by value/hue/chroma converter 114 with Vcd image data of one or more target images retrieved by dictionary data controller 120 from the dictionary data stored in dictionary data storage section 118, and selects the most similar target image, in comparing image data, a similarity of a 7χl0 sample pixel pattern of the image to be identified with a 7χl0 sample pixel pattern of a target image of the dictionary data is sought. In seeking the similarity, the following equations (5) are executed for sample Vcd images to be identified Vs ( i ) , cs(i), ds(i) [i=0,l , ...69 ] and dictionary target Vcd images Vd(i) , cd ( i ) , dd ( i ) [ i=0 , 1 , ...69 ] , Simv = ∑ (Vs( i) χVd(i) )//∑(Vs(i)2) x ∑ (vd ( i ) 2 ) Simc = Σ (cs(i ) χcd( i) )//∑(cs( i )2 ) x Σ ( cd ( i ) 2 ) (5) Simd = Σ (ds ( ) χdd( i ) )//∑(ds ( i )2 ) x ∑(dd( i )2) Then the following equation (6) is executed to determine similarity:
Sim = /simV2 + Simc2 + Simd2 (6)
For example, the similarity of the V image data of an image to be identified as illustrated in Figure 24 with dictionary V data of a target image as illustrated in Figure 25 is computed as follows:
Sim V = (6χ7 + 13χl5 + 13χl5 + 13χl5 + 13χl5 + 13χl7 + 6χ7 + 9χl0 + 17χl8 + 21χ23 + 26χ27 + 31χ33 + 30χ32 + 17χl8 + 9χl0 + 17χl8 + 32χ35 + 45χ47 + 52χ53 + 57χ59 + 28*20 + 10χll + 24χ26 + 35χ38 +
42χ45 + 66χ70 + 81χ83 + 28χ29 + 12χl3 + 30χ31 + 41χ43 + 52χ55 + 88χ91 + 119x121 + 35χ36 + 14χl5 + 32χ33 + 45χ48 + 55χ57 + 91χ96 + 125x127 + 30χ37 + 11x12 + 25χ28 + 51χ53 + 55χ57 + 118x121 + 121x124 + 31χ32 + 11x12 +
27χ29 + 44χ46 + 45χ48 + 59χ61 + 63χ65 + 23χ32 + 9χl0 + 15χl7 + 15χl7 + 15χl7 + 15χl7 + 17χl9 + 12χ24 + 6χ7 + 13χl5 + 13χl5 + -13*15 + 13x15 +
13χl5 + 6χ7)/( (6χ6 + 13χl3 + 13χl3 + 13x13 +
13χl3 + 13χl3 + 6χ6 + 9χ9 + 17χl7 + 21χ21 +
26χ26 + 31χ31 + 30χ30 + 17χl7 + 9χ9 + 17χl7 +
32χ32 + 45χ45 + 52*52 + 57χ57 + 28χ28 + 10*10 +
24χ24 + 35χ35 + 42χ42 + 66χ66 + 81*81 + 28*28 +
12χl2 + 30χ30 + 41*41 + 52χ52 + 88χ88 +
119*119 + 35*35 + 14*14 + 32*32 + 45χ45 +
55*55 + 91χ91 + 125*125 + 30χ30 + llxll +
25χ25 + 51χ51 + 55*55 + 118x118 + 121x121 + *31
+ 11*27 + 27*27 + 44*44 + 45*45 + 59*59 + 63*63 + 23*23 + 9*9 + 15*15 + 15*15 + 15*15 + 15x15 + 17*17 + 12*12 + 6*6 + 13*13 + 13*13 + 13*13 + 13χl3 + 13*13 + 6χ6)1 2 X (7*7 + 13*15 + 15*15 + 15*15 + 15*15 + 15*15 + 7χ7
+ 10*10 + 18*18 + 23*23 + 27*27 + 33*33 + 32*32
+ 18*18 + 10*10 + 18*18 + 35*35 + 47*47 + 53*53
+ 59*59 + 29*29 + 11*11 + 26*26 + 38*38 + 45*45
+ 70*70 + 83*83 + 29*29 + 13*13 + 31*31 + 43*43
+ 55*55 + 91*91 + 121*121 + 36*36 + 15*15
+ 33*33 + 48*48 + 57*57 + 96*96 + 127x127
+ 33χ37 + 12χl2 + 28χ28 + 53χ53 + 57*57
+ 121*121 + 124*124 + 32*32 + 12*12 + 29*29
+ 46*46 + 48*48 + 61*61 + 65*65 + 32*32 + 10*10
+ 17*17 + 17*17 + 17*17 + 17*17 + 19*19 + 24χ24
+ 7*7 + 15*15 + 15*15 + 15*15 + 15*15 + 15*15 + 7*7 ) )1/2 In this case, a target image with the greatest similarity is output as a result of identification.
Figure 26 illustrates a block diagram of a construc- tion of pattern matching section 122. A V similarity operator 2602, a c similarity operator 2604, and a d similarity operator 2606 all have substantially the same construction so that only the V similarity operator 2602 is described in detail with respect to the operation of determining similarity. A buffer controller 2608 outputs address signal ADR9 corresponding to less significant bits of an address for reading dictionary data in accor¬ dance with a signal from a category controller 2610 and an address signal ADR8 for reading image data of an image to be identified from the value/hue/chroma converter 114 at the same time. As a result, section 122 reads the sample image data of the image to be identified and the target image data at the same time.
In v similarity operator 2602, a multiplier 2612 is connected to receive the image data for every pixel of the V image of the sample image data and computes a squared value. An adder 2614, configured with its own output as one of its inputs, accumulates the squared values computed by multiplier 2612. In a similar manner, a multiplier 2616 is connected to receive the target image data for every pixel of the target image and computes a squared value for every such pixel. An adder 2618, configured like adder 2614, computes a cumulative value of the squared values computed by multi¬ plier 2616.
Square root operators 2626 and 2622 are respectively connected to receive the sums computed by adders 2614 and 2618. When buffer controller 2608 ends the reading of sample data for one image, square root operators 2620 and 2622 compute square roots of the outputs from adders 2614 and 2618, respectively. A multiplier 2624 computes a product of the square roots computed by operators 2620 and 2622. This is equivalent to the denominator terms of equation (5) described above. At substantially the same time, a multiplier 2626 obtains a product of every pixel of a V image of sample image data and that of target image data. An adder 2628, configured like adder 2614, accumulates the products from multiplier 2626 to provide values of the numerator terms of equation (5). A divider 2630 computes a quotient of an output value of the adder 2628 divided by an output value of the adder 2624 to pro- vide a similarity factor.
Similarly, c similarity operator 2604 and d similar¬ ity operator 2606 obtain similarity factors of the c image data and that of d image data, respectively. Then, multipliers 2632, -2634, and 2636 compute a squared value of the similarity factors for the V, c, and d image data, respectively. An adder 2638 connected to multipliers 2632, 2634, and 2638 computes the sum of the three squared values. A square root operator 2640 connected to adder 2638 computes the square root of the sum from adder 2638. These operations constitute the calculation of equation (6). This determination of similarity is repeatedly performed by accessing in dictionary section 118 the next target image within the category specified by extractor 116 via decoder 2304 of controller 120. A category having the highest similarity is output by a maximum category detector 2642 as the result of identification.
As an alternate embodiment of pattern matching section 122, a cumulative figure of color difference between the sample image data and target image data can be computed and a pattern which is closest among dic- tionary data selected. First, values of sample and dictionary target image data values Vs( i ) and Vd(i) , respectively, are normalized using values Vsmax and Vsmin, which are the maximum and minimum values of the sample data values Vs( i ) , and Vdmax and Vdmin, which are the maximum and minimum values of the dictionary target data values Vd ( i ) . For example, Vdmax and Vdmin are the single largest and smallest pixel values in the category of target image data values being considered.
After executing a conversion effected by equations (7), below, for respective images,
Vs ' ( i ) = 255 * (Vs(i) - Vsmin) / (Vsmax - Vsmin) vd' (i) = 255 * (Vd(i) - vdmin) / (Vdmax - Vdmin) (7) a cumulative color difference value dc is obtained according to equation (8) below. Then, a cumulative color difference for each category is computed, and the smallest category is output as the result of identification. In the following expression, k is a weight constant determined for calculating color differences.
64 dc = Σ ( (Vs' (i)-Vd ' ( i) )2 0 + k * (cs(i) - cd( i) )2 + k x (ds(i) - dd(i))2)1/2
(8) Figure 27 illustrates a block diagram of a construc¬ tion of the alternate embodiment matching section 122'. A buffer controller 2702 outputs the address signal ADR9 corresponding to less significant address bits for iden¬ tifying dictionary data in accordance with a signal from a category controller 2704 and the address signal ADR8 for reading sample image data of the image to be identi¬ fied from value/hue/chroma converter 114. As a result, section 122' reads the sample image data of the image to be identified and the target image data at the same time.
In order to normalize depth of color, V image data of sample image data and target image data are respectively written into a sample image V image buffer 2706 and a target image v image buffer 2708. Maximum image data value detectors 2710 and 2712 and minimum image data value detectors 2714 and 2716 are connected to monitor the data as written into buffers 2706 and 2708 and determine the maximum and minimum values of the sam¬ ple and target image data. After determining the maximum and minimum values of the sample and target image data, buffer controller 2702 generates address signal ADRlO to control reading of image data from each of buffers 2706 and 2708 for each of the 70 sample pixels. Subtracters 2718 and 2720 are connected to compute the difference between the maximum and minimum values of the sample V image data and target v image data, respectively, for each sample pixel. These results are required for the denominators of equations (7). Subtracters 2722 and 2724 are connected to compute the difference between V image data and the minimum detected data value for the sample data and target data, respecti ely, for each sample pixel. These results are required for the numerators of equations ( 7 ) .
Multipliers 2726 and 2728 are connected to multiply the numerators of equations (7) by 255. Dividers 2730 and 2732 perform the divisions in equations (7) for the sample data and the target data, respectively, for each sample pixel. Subtracter 2734 performs the subtraction of the first term of equation (8) . Buffer controller 2702 generates address signals ADR8 and ADR9 to read c and d sample and target image data from the image buffers of section 114 and storage section 118, respectively. Subtracters 2736 and 2738 are connected to receive this data to compute the differences in the second and third terms of equation (8), respectively, for each sample pixel. Multipliers 2740, 2742, and 2744 are connected to compute the square of the difference in the first, second, and third terms of equation (8), respectively. Multipliers 2746 and 2748 are connected to perform the multiplication by the weight constant k in each of the second and third terms of equation (8), respectively.
Adder 2750 is connected to multipliers 2740, 2746, and 2748 to compute the sum of the three terms of equa¬ tion (8) for each sample pixel. Square root operator 2752 is connected to compute the square root of the sum provided by adder '2750. Adder 2754 receives the square root computed by operator 2752 for each sample pixel and performs the summation of the square roots for the 70 sample pixels, as required by equation (8), to provide the cumulative color difference value dc. This cumulative color difference cumulative value dc is calculated for each target image in the category designated by extractor 116. A target image with the smallest value of dc is selected and output as the result of identified by a minimum category detector 2756. The result of identification that is output from the pattern matching sections 122 and 122' is output to external equipment by the identification result output section 124 .
As described above, according to the first embodiment, when color image data including an object to be identified are input, the object to be identified is extracted from the input color image data and the input color image data thereof are normalized to a uniform size. Then, the normalized image data are converted into averaged image data which are further converted into Vcd image values that represent a quantity of human perception. The whole color feature quantity is extracted, and it becomes possible to identify a color image -very precisely at a high speed by comparing a part of predetermined dictionary data, which is selected by the color feature quantity, with Vcd data values of the object to be identified used to enable identification. Next, a second embodiment of the invention is described .
Figure 28 is a block diagram showing a construction of an image identifying apparatus 2800 of the second embodiment of this invention. Elements in Figure 28 that are the same as those in Figure 1 are designated by the same reference numerals, and a detailed explanation of those elements is omitted. The apparatus of the second embodiment is subs-tantially the same as that illustrated in Figure 1 except that value/hue/chroma converter 114 is omitted. However, apparatus 2800 can also effectively enable identification of an object. An object P to be identified is imaged by TV camera 102 as an RGB image, converted into a digital RGB image in color image input section 104, and stored in image data storage section 106. Object detection/cut-off sec- tion 108 determines the position data of the object to be identified in the image data stored in section 106 and extracts its RGB image data. Thereafter, the RGB image data of the object to be identified are converted to a fixed size in normalizing converter 110 and are converted into an averaged image in image averaging section 112.
Color feature extractor 116' extracts features from the averaged color image. In color feature extractor 116' , for example, mean R, G, and B values of the 70 sam¬ ple pixels are computed, respectively. These three mean values are then evaluated as to their locations within 64 different color ranges. As illustrated in Figure 29, the 64 different ranges represent a simplification of a more finely graded scale of 256 color values for each or the R, C, and B components. The color feature extractor can be provided as a color feature extractor 116' which can be constructed, for example, as illustrated in Figure 30. RGB image data read from the R, G, and B buffers of image averaging section 112 are received by adders 3002, 3004 and 3006, which sum the image data for the 70 sample pixels.
Dividers 3008, 3010, and 3012 divide the sums computed by adders 3002, 3004, and 3006, respectively, by the number of sample pixels, i.e., 70, and provide mean R, G, and B values, respectively.
The data represented by the mean R, G, and B values in Figure 29 are previously written into a look-up table 3014 so that look-up table 3014 outputs numerical values, for example corresponding to the 64 color ranges, as address signals corresponding to more significant address bits for RGB target image data stored in the storage section, provided as a dictionary data storage section 118' .
Dictionary data storage section 118' , is divided in advance according to data that are output from the color feature extractor 116' when dictionary data are initially generated. Figure 31 illustrates an example of the organization of the RGB data in section 118' arranged into 64 categories corresponding to the 64 different ranges that can be identified by extractor 116' .
Referring again to Figure 28, a part of the RGB image data stored in dictionary data storage section 118' is transmitted to the pattern matching section 122 according to data received by dictionary data controller 120 from color feature extractor 116.
Pattern matching section 122 compares the dictionary data output from dictionary data controller 120 with the image data of the object to be identified and an identity of the target image data in the category corresponding to the data from extractor 116' is output from identification result output section 124.
In the second embodiment, value/hue/chroma converter 114 is omitted for the image identifying apparatus illustrated in Figure 1, and although accuracy of iden- tification may drop slightly, the construction of the apparatus becomes simpler.
Next, a third embodiment of the invention is described .
Figure 32 is a block diagram showing the construc- tion of an image identifying apparatus 3200 of the third embodiment of the present invention. Elements in Figure 32 that are the same as those in Figure 1 are designated by the same reference numerals and explanations of those elements are omitted. In the third embodiment, a data base controller 3202, a keyboard 3204, a data base stor¬ age section 3206, and a display 3208 have been added to the apparatus shown in the first embodiment illustrated in Figure 1. This arrangement facilitates the efforts of an operator performing image retrieval by using the image identification results.
In accordance with the third embodiment, data base controller 3202 is connected to receive the result of identification output by section 124. Controller 3202 is connected to control access to data stored in data base 3206. Keyboard 3204 is connected to enable a user to access data stored in data base 3206 for display on display 3208. Figure 33 illustrates one page 3302 of a catalog on which an image of a photograph 3304 that it is desired to identify has been printed. Page 3302 is imaged by TV camera 102 as an RGB image, converted into a digital RGB image data in color image input section 104, and stored in image data storage section 106. Object detection/cut¬ off section 108 determines the position data of photo¬ graph 3304 and extracts its RGB image data. This RGB image data is converted to a fixed size in normalizing converter 110 and converted into an averaged image in image averaging section 112. The averaged image is con¬ verted into a Vcd image in value/hue/chroma converter 114. Then, color feature extractor 116 determines color features of the entire cut-off image, and dictionary data controller 120 reads out data in the range specified by color feature extractor 116 from the target image data stored in dictionary data storage section 118. In succession, pattern matching section 122 compares the input Vcd image with a plurality of target image data, and category data of the closest pattern is output from identification result output section 124. Based on this identification result, data base controller 3202 outputs to display 3208 data stored in the data base 3206 which is related to the object or image to be identified. Data base 3206 stores images and data such as characters, patterns, images, voice, etc. , arranged in memory according to the respective categories used to make an identification. For example, Figure 34 illus¬ trates a possible arrangement of the data in data base 3206. The data base controller 3202 extracts related data from this data base according to the category data output from identification result output section 124 and displays data, for example, as illustrated in Figure 35A, together with the result of identification. The keyboard 3204 enables the operator to provide input category data of a kind classified by color feature extractor 116. Data base controller 3202 can display image choices of a particular category inputted by the operator and stored in data base 3206, as illustrated in Figure 35B. This enables the operator to retrieve image and related data different from the image identified by output section 124.
While practice of the third embodiment is illus¬ trated as including value/hue/chroma converter 114, the invention is not so limited. The utility and advantages realized by provision of data base 3206 and user access via keyboard 3204 are also obtained by provision of elements 3202-3208 in apparatus which does not include converter 114, such as in apparatus 2800 illustrated in Figure 28.
Next, a fourth embodiment of the invention will be described.
Figure 36 is a block diagram showing the construc¬ tion of an image identifying apparatus 3600 of the fourth embodiment of the invention. Elements in Figure 36 that are the same as those in Figure 1 are designated by the same reference numerals and explanations of those ele¬ ments are omitted. The apparatus in this embodiment is a system to identify kinds of postage stamps on postal matters. Color feature extractor 116 is omitted from the apparatus and a shape/color feature extractor 3602 is inserted in place of extractor 116.
With reference to Figure 37, a piece of mail 3700 containing a stamp 3702 is picked up as an RGB image by the TV camera 102. This color image is converted into a digital RGB image in color image input section 104 and stored in image data storage section 106. For the RGB image data in image data storage section 106, object detection/cut-off section 108 detects the position data of stamp 3702 on mail 3700 and extracts the RGB image data. The extracted RGB image data is then converted to a fixed size in normalizing converter 110 and further converted into an averaged image in image averaging section 112. The averaged image is converted into a Vcd image in value/hue/chroma converter 114.
Next, shape/color feature extractor 3602 obtains the area or size of the cut-off image, as well as an extracted color feature. Dictionary data controller 120 reads data in the range specified by shape/color feature extractor 3602 out of dictionary data stored in the storage section provided as a dictionary data storage section 118' ' . In dictionary data storage section 118' ', data are separately stored by size and color features as illustrated in Figure 38. In succession, the pattern matching section 122 compares input Vcd images with a plurality of dictionary data target images and a closest pattern category is output from the identification result output section 124 as a signal indicating, for example, insufficient postage.
While practice of the fourth embodiment of the invention is illustrated in Figure 36 as including value/hue/chroma converter 114, the invention is not so limited. The utility and advantages realized by use of the area or size of the object to be identified to cate¬ gorize data stored in dictionary section 118' ' are also obtained in color feature extraction performed without conversion to Vcd data and instead performed using RGB data, such as in system 2800 in Figure 28.
While embodiments of color feature extractor 116 have been illustrated and described, the invention is not so limited. Image data can be categorized according to values of one or more of the smallest, largest, and cen¬ tral pixel magnitude values for each of the V, c, and d image data. A correlation between such smallest, largest, and central pixel values and image color codes, such as those illustrated in Figure 21 can be stored in a look-up table that provides the corresponding color code as the output of extractor 116 for input to dictionary controller 120.
Figure 39 illustrates an embodiment of the color feature extractor provided as a color feature extractor 116' ' which extracts color features based on one or more of the smallest, largest, and central pixel values. With reference to Figure 39, Vcd image data are read from value/hue/chroma converter 114 in accordance with address signal ADRlO generated by section 122 and are stored in a memory 3902, a memory 3904 and a memory 3906. According to program instructions stored in a program memory 3908, a CPU 3910 then determines pixel values of one or more of the central, largest, and smallest values for one or more of the V, c, and d image data. For example, according to the program instructions, the 70 sample pixel values are arranged in the order of size of the respective V values, and pixel V values ranking 34th or 35th, 69th, and 0th in the order are identified as pixel V values of the central, largest, and smallest values, respectively. One of these features is used, e.g., the smallest pixel V value. Next, the c and d values of the pixel having the smallest V value are determined. A look-up table 3912 stores color codes and their correspondence to one or more of the central, largest, and smallest pixel values. In this example, the set of Vcd values for the smallest pixel V value are applied to look-up table 3912 which, in response, provides a corresponding color code data. A category output section 3914 is responsive to the output color code to provide a category of image data to dictionary controller 120.
With reference to Figure 21, if the c and d values computed by extractor 116 are below 2, the image is regarded to be a noncolor image and an NC code is assigned. However, it may be necessary to discriminate between a first case in which all pixels are colored and only mean values are noncolored and a second case in which all pixels are noncolored. Thus, in accordance with a further embodiment, the color feature extractor is constructed to discriminate between the first case and the second case with NNC and NC codes being assigned to the two cases, respectively.
A construction of such an extractor provided as a color feature extractor 116' ' ' for effecting this discrimination is illustrated in Figure 40. In Figure '40, elements that are the same as those in Figure 22 are assigned the same reference numerals and explanations of those elements are omitted. Mean values of c and d images that are read from converter 114 are calculated by adders 2202 and 2204 and dividers 2206 and 2208. Comparators 4002 and 4004 receive each c and d pixel image value, respectively, and compare the absolute value of the received value with 2. Each comparator 4002 or 4004 outputs a 1 if the absolute pixel value is less than 2, and otherwise outputs 0. Both comparator outputs are applied to a NAND gate 4006 so that the NAND gate will provide a non-zero output if both the c and d compo¬ nents of any pixel have an absolute magnitude of 2 or more, i.e., if any pixel is a color pixel. A counter 4008 counts such color pixels. The result counted by counter 4008 is applied to a comparator 4010 that provides a non-zero output if the counted result is greater than 0, i.e., in the case of at least one color pixel.
Comparators 4012 and 4014 compare the absolute value of the c and d image data, respectively, to determine if the absolute mean value is less than 2. The outputs of comparators 4010, 4012, and 4014 are applied to an AND gate 4016. AND gate 4016 provides a 1 output only for the NNC case in which the absolute mean values of the c and d image data are each less than 2 and there is at least one color pixel. A multiplexer 4018 is responsive to the output of AND gate 4016 to output the NNC code or the output of look-up table 2210 to dictionary controller 120. While several embodiments of the invention have been disclosed including circuitry for performing described functions, the invention is not so limited. Those skilled in the art will now recognize that the described functions can be practiced with equal effectiveness with software implementations of the disclosed circuitry. For example and without limitation, the functions performed by the components of image averaging section 112 as illustrated in Figure 15 can be performed with equal effectiveness by a microprocessor provided with memory resources and programmed to carry out those functions.
Additional advantages and modifications will readily occur to those skilled in the art. The invention in its broader aspects is therefore not limited to the specific details, representative apparatus and method, and illustrative examples shown and described. Accordingly, departures may be made from such details without depart- ing from the spirit or scope of the general inventive concept. Thus, it is intended that this invention cover the modifications and variations of the invention pro¬ vided they are within the scope of the appended claims and their equivalents.

Claims

C L A I M S
1. Apparatus for identifying an image represented by digital image data, comprising: means for extracting from the digital image data feature data corresponding to predetermined features of the image to be identified; a memory to store target image data representative of at least one target image; means, responsive to the extracting means, for retrieving from the memory target image data in accor¬ dance with the extracted feature data; and means for determining a similarity between the digi¬ tal image data and the retrieved target image data.
2. The apparatus of claim 1, wherein the digital image data includes color image data and the predeter¬ mined features include features corresponding to color characteristics of the image to be identified.
3. The apparatus of claim 2, further including means, responsive to the digital image data, for deter- mining selected ones of the color characteristics of the image to be identified.
4. The apparatus of claim 3, wherein the means for determining selected ones of the color characteristics includes color value means for determining hue (H) , value (V), and chroma (C) values corresponding to the digital image data.
5. The apparatus of claim 4, wherein the color value means includes means for computing values of prede¬ termined color components corresponding to the H, V, and C values.
6. The apparatus of claim 5, wherein the means for extracting includes means for extracting the feature data in accordance with the values of selected ones of the predetermined color components.
7. The apparatus of claim 2, wherein the target image data includes information representative of a size of the at least one target image and the feature data includes information representative of a size of the image to be identified; and the means for extracting including means for extracting the image size information of the image to be identified.
8. The apparatus of claim 2, further including: a data base for storing relative data related to the at least one target image; a data base controller, responsive to the similarity determining means, for retrieving from the data base the relative data related to the retrieved target image data determined by the similarity determining means to be similar to the digital image data; and means for displaying the relative data retrieved by the data base controller.
9. The apparatus of claim 8, further including a user interface to enable a user to access the relative data in the data base.
10. The apparatus of claim 5, wherein the similarity determining means includes: means for computing a first similarity factor between the digital image data and the retrieved target image data for each of the predetermined color components; means for computing a second similarity factor as a predetermined function of the respective first similarity factors computed for the predetermined color components; and means for selecting a most similar target image in accordance with the second similarity factor.
11. The apparatus of claim 5, wherein the similarity determining means includes: means for computing a cumulative difference between the digital image data and the retrieved target image data for each of the predetermined color components; and means for selecting the target image for which the cumulative difference is smallest.
12. The apparatus of claim 2, wherein the digital image data includes color characteristics of selected pixels of the image to be identified; and wherein the extracting means includes: means for computing an average value of at least a predetermined one of the color characteristics for the selected pixels; and means, responsive to the computed average value, for providing the extracted feature data.
13. The apparatus of claim 12, further including
5 means for determining selected ones of the color charac¬ teristics including hue (H) , value (V), and chroma (C) values corresponding to the digital image data and means for computing values of predetermined color components corresponding to the H, V, and C values;
10 the means for computing an average value includes means for computing an average value for at least one of the predetermined color components for the selected pixels; and the means for providing being responsive to the com-
15 puted average value to provide the extracted feature data.
14. The apparatus of claim 12, wherein the color characteristics include R, G, and B component values for each of the selected pixels;
20 the means for computing an average value includes means for computing an average value of each of the R, G, and B components for the selected pixels; and the means for providing being responsive to the com¬ puted average values of the R, G, and B components to
•25 provide the extracted feature data.
15. The apparatus of claim 1, wherein the means for determining a similarity includes means to compute a cumulative difference between the digital image data and retrieved target data and determine similarity on the basis of a minimum cumulative difference.
16. Apparatus for identifying an image represented by digital image data, comprising: a first circuit, coupled to receive predetermined portions of the digital image data, to compute a category parameter representative of the predetermined portions; a memory to store target image data representative of at least one target image; a memory controller, coupled to the memory and to receive the category parameter, to retrieve from the memory target image data corresponding to the category parameter; and a second circuit, coupled to receive the digital image data and the retrieved target image data, to determine a similarity parameter representative of a similarity between the digital image data and target image data.
17. The apparatus of claim 16, wherein the digital image data includes color image data and the predeter¬ mined features include features corresponding to color characteristics of the image to be identified; and the apparatus further including a third circuit to determine selected ones of the color characteristics of the image to be identified.
18. The apparatus of claim 17, wherein the third circuit includes circuitry to determine hue (H) , value (V), and chroma (C) values of the digital image data and predetermined color components corresponding to the H, V, and C values. 19. A method for identifying an image represented by digital image data, comprising the steps of: extracting from the digital image data predetermined features of the image to be identified; retrieving from a memory target image data represen- tative of at least one target image, in accordance with the extracted predetermined features; and determining a similarity between the digital image data and the retrieved target image data.
20. The method of claim 19, wherein the predeter- mined features include hue (H), value (V), and chroma (C) color characteristics of the digital image data; the step of extracting including a step of determin¬ ing the H, V, and C characteristics of the digital image data. 21. The method of claim 20, wherein the step of extracting includes a step of determining values of pre¬ determined color components corresponding to the H, V, and C color characteristics.
22. The method of claim 19, wherein the predeter- mined features include R, G, and B color characteristics of the digital image data; the step of extracting including a step of determining the R, G, and B color characteristics of the digital image data.
23. A system for identifying an image represented by digital image data, comprising: means for forming a digital image which includes an object to be identified; means for determining a cut-off portion of the digi¬ tal image containing the object to be identified; means for normalizing digital image data correspond- ing to the cut-off portion of the image; means for computing averaged image data for selected pixels. of the normalized image data; means for computing predetermined color components of the averaged image data; means for extracting color features corresponding to predetermined ones of the predetermined color components; a memory to store target image data representative of at least one target image; a memory controller to retrieve from the memory target image data in accordance with the extracted color features; and means for determining a similarity between the tar¬ get image data and •the predetermined color components of the averaged image data and for identifying the target image most similar to the object to be identified. AMENDED CLAIMS
[received by the International Bureau on 18 October 1995 (18.10.95); original claims 1,2,17,19,23 amended; remaining claims unchanged (8 pages)]
1. (Amended) Apparatus for identifying an image represented by digital image data, comprising: means for extracting from the digital image data feature data representing predetermined features of the whole image to be identified; a memory to store target image data representative of at least one target image; means, responsive to the extracting means, for retrieving from the memory target image data in accordance with the extracted feature data; and means for determining a similarity between the digital image data and the retrieved target image data.
2. (Amended) The apparatus of claim 1, wherein the digital image data includes color image data and the predetermined features include features corresponding to color characteristics of the whole image to be identified.
3. The apparatus of claim 2, further including means, responsive to the digital image data, for determining selected ones of the color characteristics of the image to be identified.
4. The apparatus of claim 3, wherein the means for determining selected ones of the color characteristics includes color value means for determining hue (H), value (V), and chroma (C) values corresponding to the digital image data.
AMENDEDSHEET(ARTffiLE19) 5. The apparatus of claim 4, wherein the color value means includes means for computing values of predetermined color components corresponding to the H, V, and C values. 6. The apparatus of claim 5, wherein the means for extracting includes means for extracting the feature data in accordance with the values of selected ones of the predetermined color components .
7. The apparatus of claim 2, wherein the target image data includes information representative of a size of the at least one target image and the feature data includes information representative of a size of the image to be identified; and the means for extracting including means for extracting the image size information of the image to be identified.
8. The apparatus of claim 2, further including: a data base for storing relative data related to the at least one target image; a data base controller, responsive to the similarity determining means, for retrieving from the data base the relative data related to the retrieved target image data determined by the similarity determining means to be similar to the digital image data; and means for displaying the relative data retrieved by the data base controller. 9. The apparatus of claim 8, further including a user interface to enable a user to access the relative data in the data base.
10. The apparatus of claim 5, wherein the similarity determining means includes: means for computing a first similarity factor between the digital image data and the retrieved target image data for each of the predetermined color components; means for computing a second similarity factor as a predetermined function of the respective first similarity factors computed for the predetermined color components; and means for selecting a most similar target image in accordance with the second similarity factor.
11. The apparatus of claim 5, wherein the similarity determining means includes: means for computing a cumulative difference between the digital image data and the retrieved target image data for each of the predetermined color components; and means for selecting the target image for which the cumulative difference is smallest.
12. The apparatus of claim 2, wherein the digital image data includes color characteristics of selected pixels of the image to be identified; and wherein the extracting means includes: means for computing an average value of at least a predetermined one of the color characteristics for the selected pixels; and means, responsive to the computed average value, for providing the extracted feature data.
13. The apparatus of claim 12, further including means for determining selected ones of the color characteristics including hue (H) , value (V) , and chroma (C) values corresponding to the digital image data and means for computing values of predetermined color components corresponding to the H, V, and C values; the means for computing an average value includes means for computing an average value for at least one of the predetermined color components for the selected pixels; and the means for providing being responsive to the computed average value to provided the extracted feature data. 14. The apparatus of claim 12, wherein the color characteristic include R, G, and B component values for each of the selected pixels; the means for computing an average value includes means for computing an average value of each of the R, G, and B components for the selected pixels; and the means for providing being responsive to the computed average values of the R, G, and B components to provided the extracted feature data.
15. The apparatus of claim 1 , wherein the means for determining a similarity includes means to compute a cumulative difference between the digital image data and retrieved target data and determine similarity on the basis of a minimum cumulative difference.
16. Apparatus for identifying an image represented by digital image data, comprising: a first circuit, coupled to receive predetermined portions of the digital image data, to compute a category parameter representative of the predetermined portions; a memory to store target image data representative of at least one target image; a memory controller, coupled to the memory and to receive the category parameter, to retrieve from the memory target image data corresponding to the category parameter; and a second circuit, coupled to receive the digital image data and the retrieved target image data, to determine a similarity parameter representative of a similarity between the digital image data and target image data.
17. (Amended) The apparatus of claim 16, wherein the digital image data includes color image data and the predetermined features representing color characteristics of the whole image to be identified;
MENDED SHEET(ARTICLE19) and the apparatus further including a third circuit to determine selected ones of the color characteristics of the image to be identified. 18. The apparatus of claim 17, wherein the third circuit includes circuitry to determine hue (H), value (V), and chroma (C) values of the digital image data and predetermined color components corresponding to the H, V, and C values.
19. (Amended) A method for identifying an image represented by digital image data, comprising the steps of: extracting from the digital image data predeter¬ mined features representing the whole image to be identified; retrieving from a memory target image data representative of at least one target image, in accordance with the extracted predetermined features; and determining a similarity between the digital image data and the retrieved target image data.
20. The method of claim 19, wherein the predetermined features include hue (H), value (V), and chroma (C) color characteristics of the digital image data; the step of extracting including a step of determining the H, V, and C characteristics of the digital image data.
21. The method of claim 20, wherein the step of extracting includes a step of determining values of predetermined color components corresponding to the H, V, and C color characteristics.
22. The method of claim 19, wherein the predetermined features include R, G, and B color characteristics of the digital image data; the step of extracting including a step of determining the R, G, and B color characteristics of the digital image data.
23. (Amended) A system for identifying an image represented by digital image data, comprising: means for forming a digital image which includes an object to be identified; means for determining a cut-off portion of the digital image containing the object to be identified; means for normalizing digital image data corresponding to the cut-off portion of the image; means for computing averaged image data of the normalized image data; means for computing predetermined color components of the average image data; means for extracting color features corresponding to predetermined ones of the predetermined color components, the color features representing the digital image; a memory to store target image data representative of at least one target image; a memory controller to retrieve from the memory target image data in accordance with the extracted color features; and means for determining a similarity between the target image data and the predetermined color components of the averaged image data and for identifying the target image most similar to the object to be identified.
AMENDED SHEET(ARΗCLE19)
PCT/JP1994/001200 1994-07-21 1994-07-21 Image identifying apparatus WO1996003716A1 (en)

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DE69428293T DE69428293T2 (en) 1994-07-21 1994-07-21 IMAGE IDENTIFICATION DEVICE
US08/765,814 US6047085A (en) 1994-07-21 1994-07-21 Image identifying apparatus
JP8505634A JPH10503307A (en) 1994-07-21 1994-07-21 Image recognition device
EP94921796A EP0804777B1 (en) 1994-07-21 1994-07-21 Image identifying apparatus
PCT/JP1994/001200 WO1996003716A1 (en) 1994-07-21 1994-07-21 Image identifying apparatus

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