CN110689586B - Tongue image identification method in traditional Chinese medicine intelligent tongue diagnosis and portable correction color card used for same - Google Patents

Tongue image identification method in traditional Chinese medicine intelligent tongue diagnosis and portable correction color card used for same Download PDF

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CN110689586B
CN110689586B CN201810741280.XA CN201810741280A CN110689586B CN 110689586 B CN110689586 B CN 110689586B CN 201810741280 A CN201810741280 A CN 201810741280A CN 110689586 B CN110689586 B CN 110689586B
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correction
tongue
area
image
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CN110689586A (en
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李梢
阮良
侯思宇
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Tsinghua University
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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
    • G16INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR SPECIFIC APPLICATION FIELDS
    • G16HHEALTHCARE INFORMATICS, i.e. INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR THE HANDLING OR PROCESSING OF MEDICAL OR HEALTHCARE DATA
    • G16H50/00ICT specially adapted for medical diagnosis, medical simulation or medical data mining; ICT specially adapted for detecting, monitoring or modelling epidemics or pandemics
    • G16H50/20ICT specially adapted for medical diagnosis, medical simulation or medical data mining; ICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems
    • 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

Abstract

The invention provides a recognizable portable tongue image color correction color chart used in traditional Chinese medicine intelligent tongue diagnosis and a recognition method thereof, which are used for solving the defects that the traditional tongue image color correction color chart is inconvenient to carry, is difficult to be recognized by a computer and the like. The color card is small in size and easy to carry in consideration of convenience. But too small a size is not conducive to automatic computer identification. The invention adds special geometric patterns in the specific position of the color card, adds the special geometric patterns into the color card area according to the specific size and the geometric positions, and is matched with a specific improved computer identification algorithm, thereby realizing the automatic identification, positioning and color sampling of the color card by the computer and obtaining high identification rate. The invention eliminates the complicated procedure of manually calibrating the color card in color correction and improves the efficiency of color correction processing. The invention also provides a solution for errors caused by low identification rate of the intelligent tongue inspection identifier of the traditional Chinese medicine under low pixels, perspective deformation of a color chart and other factors, and obtains good effect.

Description

Tongue image identification method in traditional Chinese medicine intelligent tongue diagnosis and portable correction color card used for same
Technical Field
The invention provides a recognizable portable tongue image color correction color chart and a recognition method thereof.
Background
The traditional Chinese medicine tongue image diagnosis mode needs a doctor to directly observe the situation of the tongue of a patient and draw a conclusion, and the mode needs the patient and the doctor to face each other, so that the convenience and the popularization are lacked. In recent years, along with the popularization of network communication, especially smart phones, the use of mobile phones for tongue image intelligent acquisition and diagnosis gradually becomes a new trend, and the defects of poor popularization and convenience of the traditional mode can be well overcome. However, the tongue image collection and diagnosis by using the mobile phone is easily interfered by external factors, and has high requirements on light, angle, definition and the like of tongue image shooting, and especially the color restoration problem in color photography, these technical difficulties become problems to be solved urgently in the tongue image collection development of the mobile phone.
The method is one of the commonly used methods at present, and analyzes and fits according to the color change condition of the color card, so as to indirectly infer the color change of the tongue color and finally realize the standardized treatment of the tongue color. However, the color card used in the existing tongue color correction research is usually large in size, the smallest color card has the size of a book, the color card is not convenient to carry about, and an effective solution is also lacked in the intelligent acquisition of the tongue image in traditional Chinese medicine. In addition, the color card used in the existing color correction lacks the function of automatic positioning, and the color card is often identified and positioned manually in practical application. Such a method requires high labor cost, certain operation and processing time, and may have a great influence on the efficiency and accuracy of the tongue image acquisition standardization process.
In addition, for tongue image color identification in intelligent acquisition of the tongue image in traditional Chinese medicine, an actual effective scheme is lacked in the prior art.
Disclosure of Invention
The invention provides a recognizable portable tongue image color correction color chart and a recognition method thereof.
Drawings
FIG. 1 is a flow chart of a method for identifying a color correction target for a tongue image according to an embodiment of the present invention.
FIG. 2 is a tongue color correction target according to one embodiment of the invention.
Fig. 3 is used to illustrate the identification of a color chip location identifier according to one embodiment of the present invention.
Fig. 4 is a diagram for illustrating a shape change of a rectangle after perspective deformation.
Fig. 5 shows a graph of the variation of the sample points identifying success and failure.
Detailed Description
In view of the above problems in the prior art, the present inventors propose a portable color correction color chip with an automatic positioning function and an identification method thereof. The invention aims to 2, firstly, the positioning work of the color card identification which is usually manually finished in the past is finished by a machine by utilizing a special color card design and an automatic identification method, so that the working efficiency and the normalization of a color correction process are improved, and convenience is provided for large-scale tongue image color correction or color correction under other scenes. The invention provides a color card positioning method based on a position identifier, which is characterized in that a pattern with a special shape is arranged at the vertex of a color card, a symbol is identified and positioned by using an image identification algorithm, and then the positions of all color blocks are deduced through a geometric relation and the corresponding color values are calculated. And secondly, the shape, size, layout and the like of the traditional color card are improved, so that the color card can achieve the effects of convenient carrying and use in practical use.
As shown in fig. 1, the color chart identification and color correction process includes:
the method comprises the following steps: and setting a color card special position identifier. Different special identifiers are respectively designed at four vertexes of the color card. With three vertices taking one sign and the last vertex taking another sign, the two signs having different geometric characteristics. According to a specific embodiment of the present invention, after the position identifier is set, color blocks are filled in the rectangular region formed by the four symbols.
Step two: and acquiring an image by using the color card. And placing the color card and the object in the same scene in the area under the same light condition for shooting to obtain an image simultaneously containing the target object and the color card.
Step three: and searching the image, and searching the positions of 4 symbols by using the geometric characteristics of the symbols. Due to the problem of shooting angle, the rectangular color chart may be distorted into an arbitrary quadrangle due to the perspective effect, so that the coordinates need to be corrected by using the geometric relationship of four vertices to restore the area into a rectangle.
Step four: and calculating and positioning the color block area by utilizing the pre-designed set relation of the color blocks and the color cards to find the center points of the color blocks. And searching the image by using the central point to find the boundary of the color block, thereby determining the position of the whole color block. And finally, calculating the color of the whole color block. According to a specific embodiment, the boundaries of the color blocks are found by using a region growing method.
Step five: and according to the color taking result, performing linear fitting correction by using color block color information in a standard environment, automatically judging the recognition result according to the goodness of fit, and judging that the recognition is successful when the goodness of fit reaches and/or exceeds a certain preset threshold value.
Finally, after all the steps are completed, the color correction algorithm can be used for carrying out color correction on the image and finally obtaining the tongue image with standardized color.
The embodiments of the present invention will be further described with reference to the accompanying drawings.
Designing a color card:
FIG. 2 is a portable tongue image color correction color chip supporting automatic positioning according to one embodiment of the present invention. The color chip includes two regions: a hand-held area and a color chip area.
The handheld region is arranged on one side of the color card, so that a sufficient space is ensured when the handheld region is held by a single hand, the use convenience is ensured, and the effect of color correction is influenced in order to fully avoid the phenomenon that the color card is shielded by the hand and/or shadow is generated in the color card region.
According to a specific embodiment of the present invention, the color chip area is a rectangle and includes 3 portions, which are the location identifier area, the additional information identification area, and the color chip color block area.
According to a particular embodiment, the location identifier zones are distributed at the four vertices of the colour chip area, which have special geometrical characteristics. According to a specific embodiment, the identifier comprises a first identifier and a second identifier depending on the difference in the geometrical characteristics.
According to a particular embodiment of the invention. Wherein the 1-type identifier includes three rectangles with a side length ratio of 7. The second identifier includes three rectangles having a side length ratio of 5.
The additional information identification area contains simple mark points, for example, mark points that can be analyzed according to a binary rule, for example, four color blocks for recording the version number of the color card are included as parameter settings when the color card is further analyzed subsequently. The color card color block area comprises a plurality of squares which have the same size and are uniformly arranged in a rectangle formed by the position identifiers. Each color block has a black border, which can help the recognition program to better recognize the boundaries of the color blocks. The inner area of the color block is filled with different colors, and the specific color can be properly selected and/or replaced to meet different practical purposes.
Identification by an identifier:
after the image is acquired by using the color card, the image needs to be subjected to gray scale and binary processing. According to one embodiment of the invention, a dynamic global threshold method is adopted to carry out binary processing on the image, wherein a plurality of groups of candidate threshold values are preset, and the threshold values are substituted into the binary processing one by one. The binarized image is scanned in the manner of fig. 3 in the x-axis and y-axis, respectively, and is identified based on the geometric features of the identifier.
The color chip identifier location algorithm according to one embodiment of the present invention comprises:
(1) And determining a threshold th in the candidate threshold library as an initial binarization threshold, and binarizing the gray level image to obtain a binary image G.
(2) The length of the continuous black or white dots is counted in each line. If black is satisfied: white: black: white: black = 1.
(3) And after a candidate point library is obtained, searching in the square r pixels, judging whether other candidate points exist or not, counting the number of the candidate points, if the number of the candidate points around is larger than a preset target n, considering the candidate points as target points, and adding the target points into a target point library.
(4) The X and Y axis direction is reversed, the steps (2) and (3) are carried out again, and finally the X and Y coordinates of all points are obtained
(5) Selecting the next candidate threshold th from the candidate preset library and repeating the steps (2) - (4)
(6) And summarizing all results, carrying out DBSCAN clustering analysis, selecting an area with the number of the clustering points ranked in the first three as a final area, and acquiring the coordinate of the central point of the final area as the coordinate of the identifier.
And color block center point positioning:
due to perspective, the rectangle of the color chip may be distorted into an arbitrary quadrangle, as shown in fig. 4, where points a, B, and D are type 1 identifiers and point C is a type 2 identifier. If the geometric calculation is directly carried out, the obtained result has larger error. In one embodiment according to the invention, the method is to reduce any quadrilateral into a rectangle and then to further process it. And transforming the coordinates of the image in a gray scale space by using a geometric relationship to determine the target coordinates of the pixel points, wherein the original gray scale value is reserved for the gray scale value. Since the calculated coordinates are not necessarily integers, and the gray values corresponding to specific integer coordinate points in the target image need to be interpolated, in one embodiment according to the present invention, bilinear interpolation is used for processing. However, such a method has a large amount of calculation, and in a preferred embodiment of the present invention, the determination of coordinates of a center point of a color block is directly performed by using a perspective principle formula, which includes:
let the coordinate of the center point X of a color block in the standard rectangle be i, j, the length of the original rectangle be a, and the height be b. After perspective transformation, four vertexes of the rectangle are respectively changed into (a) 1 ,b 1 ),(a 2 ,b 2 ),(a 3 ,b 3 ),(a 4 ,b 4 ) Then the coordinates of point X, after perspective transformation, become:
Figure GDA0003581099720000041
Figure GDA0003581099720000042
therefore, when the coordinates i and j of the center point of the color block in the standard rectangle are determined, the coordinates i 'and j' corresponding to the center point in the actually shot image can be deduced.
Color block selection and color value calculation:
after the coordinates of the central point of the color block are obtained, the image is processed by a region growing algorithm in a gray scale space, and the color block has an obvious boundary, so that the color and the gray value in the same region are approximately uniform, and a relatively complete color block region can be obtained by the region growing algorithm. After the color block area is determined, considering that the boundary may cause deviation to the value of the average color, the boundary of the color block area needs to be cut, and in a specific embodiment according to the invention, the specific cutting size is 1/10 of the side length of the color block area; thereby obtaining the final patch areas. Finally, the specific color values of the patches may be obtained by calculating the average of the colors of the patch areas. In this way, the color of all color blocks of the whole color card is obtained by processing each color block area. In addition, the value of the additional information identification area is determined, and the additional information such as the color card version is read.
And (3) judging whether the color card identification is successful:
after intensive and specific research, the invention discovers that: 1) The identification of the color card has a failure; therefore, 2) means for judging the recognition failure is required.
Specifically, the case where the recognition fails includes:
identification failure due to ambiguity and/or unrecognizability of several location identifiers of the color chart, or
The position of the identified color block is obviously deviated due to serious deformation of the color block image and the like, so that the identified color block area can be some irrelevant areas and/or patterns,
the color value of the color block obtained under the above conditions is not the actual color value of the color block associated with the color card, i.e., the recognition fails.
Therefore, according to an embodiment of the present invention, after the color chart identification is performed, the identification effect of the color chart is determined, and only the sample values meeting the "identification success" requirement are subjected to the subsequent processing.
On the basis of a large number of experimental verifications, the inventor finds that under a common shooting condition, the color change of a color block of a color card relative to the color change under a standard environment approximately conforms to a linear rule under an RGB channel. The experiment is realized on the basis of the existing 48-color card, and the design RGB values of each color block of the color card are as follows.
Figure GDA0003581099720000051
Figure GDA0003581099720000061
Fig. 5 shows the color change of the sampling points in the R channel, where the identification succeeds and fails, and it can be seen that the change of R in the case of successful identification better conforms to the linear law. Accordingly, the present inventors propose a scheme for determining a recognition result by using a linear regression method, specifically including:
suppose a color card has n sampling points, which are embodied as n color blocks with numbers of 1-n and Y 1 ,Y 2 ...Y N Color measurements of n color patches in a standard environment, respectively, and y 1 ,y 2 ...y n Color measured values of color patches numbered 1 to n in a general environment (shooting environment). Y is R 、y R For each sampling point to take a value on the R channel, then the least square method is used to obtain the representation Y R 、y R The formula of linear approximate relationship between:
Y R =f R (y R )=k R ·y R +b R
wherein f is R For the mapping function under R channel, k R 、b R As a mapping function f R And fitting coefficients of the first order term and the constant term.
Similarly, the mapping function f under the G channel and the B channel can be obtained respectively G ,f B
There is a measured value of R, G, B channel of a point i to be calibrated
Figure GDA0003581099720000065
It is known to obtain a correction value for point i in a standard environment
Figure GDA0003581099720000062
In one embodiment according to the present invention, the following formula is used to calculate separately
Figure GDA0003581099720000063
The value of (c):
Figure GDA0003581099720000064
wherein all the coefficients k and b in the above formula are determined by using the principle of classical least squares
Figure GDA0003581099720000071
And solving the linear equation of (a).
After the equation coefficients k and b are obtained, the fitting equation and the actual measurement value can be subjected to statistical analysis and linear goodness of fit R can be obtained 2 . Wherein R is 2 The calculation can be made according to the following formula:
Figure GDA0003581099720000072
wherein y is i Refers to the measured value of the i-th sample,
Figure GDA0003581099720000073
the correction value calculated by the linear regression equation of the ith sample is referred to,
Figure GDA0003581099720000074
is the average of all measured values y, where 1. Ltoreq. I.ltoreq.n.
According to another embodiment of the invention, the goodness of linear fit R 2 Is determined by the following steps:
determination of y i I =1,2 \ 8230n, the linear goodness of fit R of the distribution of a first subset of n 2
Figure GDA0003581099720000075
Wherein:
the summation in the above equation is over the first subset,
Figure GDA0003581099720000076
is the correction value for the ith sample,
Figure GDA0003581099720000077
is one selected from the following:
the average value of all measured values y, wherein i is more than or equal to 1 and less than or equal to n,
the average of the measured values y for the first subset, an
y i A second subset of the plurality of measured values y.
In one exemplary embodiment according to the present invention, when R 2 And if the value is more than 0.8, the identification is considered to be successful.
And after the successful identification is judged, carrying out next color correction processing by using the information of the change of the color block of the color card relative to the color in the standard environment, namely correcting the color of the tongue image, thereby obtaining the tongue image after color correction. The color correction processing of the next step may use an interpolation method or a regression method such as linear regression, polynomial regression, or the like.
In a series of experiments that the present inventors have performed, 134 samples of color chart images taken under different conditions were classified and compared. Utilizing the above-mentioned R 2 The evaluation method of more than 0.8 evaluates the color card identification result. The recognition accuracy can reach about 94.2% in a severe environment with low pixels, and the recognition rate can reach 98.5% in a better environment with high pixels, and the recognition rate can reach 96.3% in total, so that the requirements of practical use can be met. The specific results include:
Figure GDA0003581099720000081

Claims (10)

1. a tongue image recognition method by a portable tongue image color correction color chart, the correction color chart including a plurality of color patches having different colors, respectively, includes:
a) Determining whether color recognition of the correction color chart is successful for an image of the correction color chart photographed under the same photographing condition as that of the tongue image,
b) When the color identification of the correction color card is judged to be successful in the step A), the color of the tongue image is corrected by utilizing the information of the change of the color block of the correction color card relative to the color under the standard environment, so as to obtain the tongue image after the color correction,
characterized in that step A) comprises:
a1 Determine the value y of each of the n color patches of the correction color chip on at least one color channel under the capture conditions i ,i=1,2…n,
A2 For the n measured values y) i Determining fitting coefficients k and b of the primary term and the constant term by using the principle of least squares, and further determining corresponding color correction values
Figure FDA0003796513550000011
Figure FDA0003796513550000012
A3 Determine y) i I =1,2 \ 8230n, the linear goodness of fit R of the distribution of a first subset of n 2
Figure FDA0003796513550000013
Wherein:
the summation in the above equation is over the first subset,
Figure FDA0003796513550000014
is the corrected value for the i-th sample,
Figure FDA0003796513550000015
is one selected from the following items:
the average of all measured values y, where 1. Ltoreq. I. Ltoreq.n,
the average of the measured values y for the first subset, an
y i A second subset of the measured values y,
a4 When R is 2 When the value is greater than or equal to a predetermined threshold value, the image recognition is judged to be successful, and when R is greater than or equal to the predetermined threshold value 2 And when the value is smaller than a predetermined threshold value, judging that the image recognition fails.
2. The tongue image recognition method according to claim 1, further comprising:
determining the central point of each color block by using the preset set relation of the color blocks and the correction color cards,
the center points of the patches are used to search the image of the correction color chart, thereby determining the boundaries of the patches and determining the colors of the patches.
3. The tongue image recognition method according to claim 1, wherein:
the calibration color chip includes a plurality of identifiers respectively disposed at a plurality of predetermined positions of the calibration color chip,
the plurality of identifiers comprising at least two different symbols, the at least two different symbols having different geometric characteristics,
searching the image, determining the position of each symbol by using the geometric characteristics,
the coordinates are corrected using the positions of the respective symbols, and distortion that may occur due to the perspective effect of photographing is corrected.
4. The tongue image recognition method according to claim 1, wherein:
the image and tongue image of the corrected color chart are obtained by placing the color chart and the object in the same scene in the area of the same light condition and photographing.
5. The tongue image recognition method according to claim 2, wherein:
determining the boundaries of the color patches includes determining the boundaries of the color patches using a region growing method.
6. The tongue image recognition method according to claim 1, wherein:
the first subset and the second subset are randomly selected.
7. A computer-readable storage medium, on which a computer program is stored, characterized in that the computer program is able to cause a processor to execute a tongue identification method according to one of claims 1-6.
8. A portable correction color chip, characterized in that it is adapted for use in a tongue recognition method according to one of claims 1-6, and comprises:
a plurality of color blocks with different colors respectively,
a plurality of identifiers respectively disposed at a plurality of predetermined positions of the correction color chart,
wherein:
the plurality of identifiers includes at least two different symbols having different geometric features so that the positions of the respective symbols can be determined by searching the image and using the geometric features.
9. The portable correction color chip of claim 8, wherein:
the portable correction color chip comprises a handheld area and a color chip area,
the hand-held area is arranged at one side of the color card to ensure that sufficient space is available when the hand is held by a single hand and to fully avoid the hand from shielding the color card and/or generating shadow in the color card area,
the color chip area is a rectangle and includes a location identifier area and a color block area.
10. The portable correction color chip of claim 9, wherein:
the location identifier area is distributed at four vertices of the color chip area, which have predetermined geometrical characteristics,
and the color blocks are arranged in the color block area.
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CN112950485B (en) * 2020-11-27 2023-11-03 京东科技控股股份有限公司 Color card, image color difference processing method and device, electronic equipment and storage medium
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