CN108898597B - Method for identifying painting and calligraphy based on smart phone - Google Patents

Method for identifying painting and calligraphy based on smart phone Download PDF

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CN108898597B
CN108898597B CN201810692348.XA CN201810692348A CN108898597B CN 108898597 B CN108898597 B CN 108898597B CN 201810692348 A CN201810692348 A CN 201810692348A CN 108898597 B CN108898597 B CN 108898597B
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image
matching
painting
points
calligraphy
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CN108898597A (en
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田原
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Guangdong Chuangtu Culture Media Co ltd
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Guangdong Chuangtu Culture Media Co ltd
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    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T7/00Image analysis
    • G06T7/0002Inspection of images, e.g. flaw detection
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T7/00Image analysis
    • G06T7/30Determination of transform parameters for the alignment of images, i.e. image registration
    • G06T7/33Determination of transform parameters for the alignment of images, i.e. image registration using feature-based methods

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  • Computer Vision & Pattern Recognition (AREA)
  • Physics & Mathematics (AREA)
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Abstract

The invention discloses a method for identifying painting and calligraphy based on a smart phone, which comprises two steps of filing and authentication; firstly, a plurality of detail textures which can be used for matching are positioned in a painting and calligraphy sample by an image feature detection method, and then consistency comparison of the textures is realized under the limited magnification of a mobile phone camera, so that consistency of the painting and calligraphy image and the sample in a database is judged. The invention can identify the painting and calligraphy based on the smart phone, has lower application cost and simple flow operation, can meet the identification requirements of common consumer groups at any time and any place, has three-step matching operation and has very high identification result accuracy, thereby having higher market popularization and application value.

Description

Method for identifying painting and calligraphy based on smart phone
Technical Field
The invention relates to a method for identifying calligraphy and painting certificates, in particular to a method for identifying calligraphy and painting certificates based on a smart phone.
Background
The painting and calligraphy authentication is a way for identifying painting and calligraphy works in folk. Most of the existing identification methods are manual identification methods, but if the meanings of the calligraphy and painting and the classification of the painting are not understood, the identification is not carried out. In order to clear the obstacle, people usually need to understand the knowledge, otherwise, the authenticity of the painting cannot be identified, the price is not accurate, and the basis is lost during appreciation.
American and Dutch researchers have studied the difference characteristic of the effects of painting and brush stroke with the help of the computer algorithm, have developed a set of AI artificial intelligence systems that can discern the painting true and false, this system can discern whether the painting is a counterfeit article with the help of the simple effect of brush stroke, although easy to operate, the rate of accuracy is higher, but also there is the defect that the fabrication cost is high, the sexual valence is lower too, not suitable for ordinary consumer groups. Therefore, the development of a novel intelligent painting and calligraphy authentication method is still a hot problem for people to focus on research.
Disclosure of Invention
In order to solve the defects of the technology, the invention provides a method for identifying the painting and calligraphy based on a smart phone.
In order to solve the technical problems, the invention adopts the technical scheme that: a method for identifying calligraphy and painting based on a smart phone comprises two steps of recording and authenticating;
firstly, recording:
a. shooting a painting and calligraphy sample image to enable the shot breadth to cover most of the area of the painting and calligraphy sample;
b. extracting feature points on the graph and obtaining respective feature attribute description of the feature points;
c. screening the characteristic points, and selecting more than 4 stable characteristic points more uniformly;
d. then selecting a plurality of salient feature points which are easy to distinguish by people;
e. manually selecting one of the remarkable feature points, moving the mobile phone to the feature point, amplifying the feature point after the mobile phone moves to the height specified by the picture, turning on a flash lamp, then shooting an image, and focusing and shooting a plurality of sequence images by a mobile camera;
f. automatically selecting the clearest image from the sequence images, extracting the feature points and the attribute description of the image again according to the method, and storing the feature points and the attribute description;
g. selecting a block region with rich detail texture of small blocks from a painting and calligraphy sample image as a matching candidate point, storing the characteristic image after characteristic transformation such as gradient transformation, and marking the offset position and size of the small blocks;
h. repeating the processes of the steps e to g, and selecting a plurality of different micro characteristic matching candidate points;
i. storing the characteristic points and the attribute description, and the small block offset position and size into a set file directory, and recording the file directory as template image data;
II, authentication:
a. shooting a painting and calligraphy sample image to be authenticated, and enabling the shot breadth to cover most of the painting and calligraphy image;
b. extracting feature points on the graph and obtaining respective feature attribute description of the feature points; screening the characteristic points, and selecting more than 4 stable characteristic points more uniformly;
c. matching the stable characteristic points with the characteristic points in the template and performing consistency comparison between the characteristic points; if the matching success point number is smaller than the specified proportion, the matching is considered to be failed, and the authentication is quitted; if the matching is not successful, calculating the position, angle and scale deviation of the current sample image and the template image, and continuing the next step;
d. displaying the matched candidate points of the shot magnified image on the template image or the current sample image, manually selecting one of the candidate points, moving the camera to be close to the candidate point, turning on a flash lamp after the candidate point is magnified, then shooting the image, and moving the camera to focus on a plurality of shooting sequence images;
e. automatically selecting the clearest image from the sequence images, extracting the feature points and the attribute description of the image again according to the method, and storing the feature points and the attribute description;
f. matching the feature points in the last step with the feature points in the template again, and if the matching is successful, calculating the position, angle and scale deviation of the current sample image and the template; if the matching fails, the point is changed again and the operation is repeated;
g. according to the matching result, image correction is carried out on the position, angle and scale deviation of the current sample image and the template to obtain the position of a matching candidate block, corresponding to a matching candidate point in the template, in the current sample image, and the characteristic image is obtained after characteristic transformation, such as gradient transformation, is carried out on the current sample image as the template image;
h. moving the matching candidate blocks up, down, left and right by a small amount, calculating the correlation coefficient between the characteristic images, and observing whether the correlation coefficient exceeds a set threshold value; if yes, matching is successful; otherwise, the matching fails;
i. and selecting the matching points according to the reliability requirement, if the successfully matched points are larger than a set proportion threshold, considering that the consistency check is successful, and otherwise, considering that the consistency check is failed.
Further, the feature points extracted in the first step and the second step include SIFT points, corner points, and SURF points.
Furthermore, the candidate position for shooting the amplified image is displayed in the wide template image or the current sample image, so that the user can conveniently select the shooting position of the amplified image.
Further, the specific way of automatically selecting the clearest image in the first step and the second step is as follows: the definition of the image is determined by the gradient change or the high-frequency component of the image.
The invention obtains the accurate positioning of the detail texture at a certain position in the painting and calligraphy works through two times of feature point matching, and then obtains the final work consistency authentication by calculating the correlation coefficient between feature image blocks.
The invention can identify the painting and calligraphy based on the smart phone, has lower application cost and simple flow operation, can meet the identification requirements of common consumer groups at any time and any place, has three-step matching operation and has very high identification result accuracy, thereby having higher market popularization and application value.
Detailed Description
The present invention will be described in further detail with reference to specific embodiments.
A method for identifying calligraphy and painting based on a smart phone comprises two steps of recording and authenticating;
firstly, recording:
a. shooting a painting and calligraphy sample image to enable the shot breadth to cover most of the area of the painting and calligraphy sample;
b. extracting feature points on the graph, such as SIFT points, corner points, SURF points and the like, and obtaining respective feature attribute description;
c. screening the characteristic points, and selecting more than 4 stable characteristic points more uniformly; the selection of stable characteristic points needs at least 4, but can be hundreds or more in order to improve the precision, so that more characteristic points can be selected as much as possible if possible, and the characteristic points and the characteristic description thereof are stored;
d. then selecting a plurality of salient feature points which are easy to distinguish by people;
e. manually selecting one of the remarkable feature points, moving the mobile phone to the feature point, amplifying the feature point after the mobile phone moves to the height specified by the picture, turning on a flash lamp, then shooting an image, and focusing and shooting a plurality of sequence images by a mobile camera;
f. judging the definition of the image through the gradient change of the image or the high-frequency component, automatically selecting the clearest image from the sequence images, extracting the feature points (such as SIFT and the like) of the image and attribute description thereof again according to the method, and storing the feature points and attribute description;
g. selecting a block region with rich detail texture of small blocks from a painting and calligraphy sample image as a matching candidate point, storing the characteristic image after characteristic transformation such as gradient transformation, and marking the offset position and size of the small blocks;
h. repeating the processes of the steps e to g, and selecting a plurality of different micro characteristic matching candidate points;
i. storing the characteristic points and the attribute description, and the small block offset position and size into a set file directory, and recording the file directory as template image data;
II, authentication:
a. shooting a painting and calligraphy sample image to be authenticated, and enabling the shot breadth to cover most of the painting and calligraphy image;
b. extracting feature points on the graph and obtaining respective feature attribute description of the feature points; screening the characteristic points, and selecting more than 4 stable characteristic points more uniformly; if possible, more feature points can be selected as much as possible, and the feature points and feature descriptions thereof are stored;
c. matching the stable characteristic points with the characteristic points in the template and performing consistency comparison between the characteristic points; if the matching success point number is smaller than the specified proportion, the matching is considered to be failed, and the authentication is quitted; if the matching is not successful, calculating the position, angle and scale deviation of the current sample image and the template image, and continuing the next step;
d. displaying matching candidate points of the shot magnified image on the template image or the current sample image (the candidate positions of the shot magnified image can be displayed in the wide template image or the current sample image, so that a user can conveniently select the shooting position of the magnified image), manually selecting one of the candidate points (one of the candidate points can be selected arbitrarily), moving the camera to be close to the candidate point, turning on a flash lamp after the candidate point is magnified, then shooting the image, and moving the camera to focus on a plurality of shooting sequence images;
e. automatically selecting the clearest image from the sequence images, extracting the feature points and the attribute description of the image again according to the method, and storing the feature points and the attribute description;
f. matching the feature points in the last step with the feature points in the template again, and if the matching is successful, calculating the position, angle and scale deviation of the current sample image and the template; if the matching fails, the point is changed again and the operation is repeated;
g. according to the matching result, image correction is carried out on the position, angle and scale deviation of the current sample image and the template to obtain the position of a matching candidate block, corresponding to a matching candidate point in the template, in the current sample image, and the characteristic image is obtained after characteristic transformation, such as gradient transformation, is carried out on the current sample image as the template image;
h. moving the matching candidate blocks up, down, left and right by a small amount, calculating the correlation coefficient between the characteristic images, and observing whether the correlation coefficient exceeds a set threshold value; if yes, matching is successful; otherwise, the matching fails;
i. and selecting the matching points according to the reliability requirement, if the successfully matched points are larger than a set proportion threshold, considering that the consistency check is successful, and otherwise, considering that the consistency check is failed.
The method positions a plurality of detail textures which can be used for matching in the painting and calligraphy sample through the detection method of the image characteristics, and realizes consistency comparison of the textures under the limited magnification factor of the mobile phone camera, thereby judging the consistency of the painting and calligraphy image and the sample in the database.
The invention adopts three steps to record and authenticate the painting and calligraphy, namely the extraction and matching of the characteristics of a wide image, the extraction and matching of the characteristics of an amplified image and the related matching of the image or the characteristic image.
The above embodiments are not intended to limit the present invention, and the present invention is not limited to the above examples, and those skilled in the art may make variations, modifications, additions or substitutions within the technical scope of the present invention.

Claims (4)

1. A method for identifying calligraphy and painting certificates based on a smart phone is characterized by comprising the following steps: the method comprises two steps of filing and authenticating;
firstly, recording:
a. shooting a painting and calligraphy sample image to enable the shot breadth to cover most of the painting and calligraphy sample;
b. extracting feature points on the graph and obtaining respective feature attribute description of the feature points;
c. screening the characteristic points, and selecting more than 4 stable characteristic points more uniformly;
d. then selecting a plurality of salient feature points which are easy to distinguish;
e. manually selecting one of the salient feature points, moving the mobile phone to the feature point, amplifying the mobile phone to a height specified by a picture, turning on a flash lamp, then shooting an image, and focusing and shooting a plurality of sequence images by a mobile camera to obtain a detailed image;
f. extracting feature points again from the detail image, obtaining respective feature attribute description of the feature points, and storing the feature point positions and the attribute description of the feature points;
g. selecting a small block area in the detail image as a matching position, performing gradient transformation on the small block image at the position to form a gradient image, storing the gradient image, and marking the offset position and size of the small block area relative to the detail image;
h. repeating the processes of the steps e to g, and selecting a plurality of different micro characteristic matching candidate points;
i. storing characteristic points and attribute description of shot painting and calligraphy sample images and detailed images and offset positions and sizes of gradient images into a set file directory, and recording the characteristic points and attribute description and the offset positions and the sizes as template image data;
II, authentication:
a. shooting a painting and calligraphy sample image to be authenticated, and enabling the shot breadth to cover most of the area of the painting and calligraphy sample image to obtain a wide image of the painting and calligraphy work to be authenticated;
b. extracting feature points on the wide image and obtaining respective feature attribute description of the feature points;
c. matching the characteristic points on the wide image with the characteristic points in the template image and performing matching between the characteristic points; if the matching success point number is smaller than the specified proportion threshold value, the matching is considered to be failed, the matching is considered not to belong to the same work, and the authentication is quit; if the matching is not successful, calculating mapping parameters including position, angle and scale deviation between the wide image and the template image, and continuing the next step;
d. calling a template image, and displaying the position of the shot detail image in the template image; manually selecting one of the works, moving the camera to the position, turning on a flash lamp, and shooting a detail clear image of the work to be authenticated after amplification;
e. automatically selecting the clearest image from the detail clear images in the step d, and shooting other detail images in the work to be authenticated again according to the method in the authentication step d;
f. matching the characteristic points of the detail image in the template image with the characteristic points of the detail clear image of the authentication work, and if the matching is successful, calculating the mapping relation parameters between the template image and the detail clear image of the work to be authenticated; if the matching fails, the authentication steps b to e are repeated by replacing points again;
g. according to the matching result in the step f, carrying out image correction on the position, angle and scale deviation of the current sample image and the template to obtain the position of a matching candidate block, which corresponds to a matching candidate point in the template and is positioned in the current sample image, and carrying out feature transformation on the current sample image to obtain a feature image as same as the template image;
h. moving the matching candidate blocks up, down, left and right by a small amount, calculating the correlation coefficient between the characteristic images, and observing whether the correlation coefficient exceeds a set threshold value; if yes, matching is successful; otherwise, the matching fails;
i. if the matching of most of small images is successful, the small images are regarded as the same work, and the authentication is successful; otherwise, the work is regarded as different works, and the authentication fails.
2. The smart phone based calligraphy and painting certification method according to claim 1, wherein: the feature points extracted in the first step and the second step comprise SIFT points, corner points and SURF points.
3. The smart phone based calligraphy and painting certification method according to claim 2, wherein: and displaying the candidate position for shooting the amplified image in the wide template image or the current sample image, so that a user can conveniently select the shooting position of the amplified image.
4. The smart phone based calligraphy and painting certification method according to claim 3, wherein: the specific mode for automatically selecting the clearest image in the first step and the second step is as follows: the definition of the image is determined by the gradient change or the high-frequency component of the image.
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