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Image representation method and applications thereof in image matching and recognition

An image representation and image technology, applied in the field of image processing, can solve the problems of large difference in description effect and poor feature robustness, and achieve the effect of improving the number and matching accuracy, improving matching accuracy, and enriching image features.

Active Publication Date: 2014-06-18
SHENZHEN INST OF ADVANCED TECH
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

Most of the image feature extraction methods in the prior art revolve around the color, texture, shape and spatial relationship of the image. Although these methods can describe the features of the image, they have the disadvantage of poor robustness of the obtained features.
There is also an existing technology based on the invariant feature description method of the transform domain. Due to the inherent properties of the transform domain, the description effect of this prior art is quite different before and after the image is clipped.

Method used

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  • Image representation method and applications thereof in image matching and recognition
  • Image representation method and applications thereof in image matching and recognition
  • Image representation method and applications thereof in image matching and recognition

Examples

Experimental program
Comparison scheme
Effect test

Embodiment 1

[0052] Embodiment 1: Image representation method based on phase singularity

[0053] Such as figure 1 As shown, the flow of the image representation method of this application is as follows:

[0054] S1-1 Read image information

[0055] In this step, the two-dimensional image equation I (x, y) is obtained by reading the image information;

[0056] S1-2 Two-dimensional complex filter processing

[0057] Combine the two-dimensional image equation I(x, y) with the two-dimensional complex filter T(x, y)=T r (x,y)+iT l (x, y) is convolved to obtain a complex image:

[0058] I ^ ( x , y ) = I ( x , y ) * T ( x , y ) = I ( x ,...

Embodiment 2

[0104] Embodiment 2: Image matching based on phase singularity

[0105] S2-1 read image I and image I' information

[0106] Read the two-dimensional image equations I(x, y) and I'(x, y) of image I and image I' respectively;

[0107] S2-2 Perform two-dimensional complex filter processing on image I and image I'

[0108] I (x, y) and I' (x, y) are carried out respectively according to the method of S1-2 in the embodiment 1 complex number filtering process, obtain:

[0109] The complex image equation of image I is

[0110] I ^ ( x , y , σ ) = I ( x , y ) * LG ( x , y , σ )

[0111] = I (...

Embodiment 3

[0135] Embodiment 3: Image recognition based on phase singularity

[0136] S3-1 According to the category attributes of the samples, use the SVM classifier to perform classifier training for different types of samples, and obtain classifiers for different types of images

[0137] Creation of S3-1-1 samples

[0138] The training samples are divided into positive samples and negative samples, where the positive sample is the target sample to be detected, such as training a car image classifier, the positive sample is a car; the negative sample refers to any other picture other than the positive sample picture .

[0139] S3-1-2 Training classifier

[0140] According to the method in embodiment 1, all the pictures in the sample are detected and positioned at the phase singularity;

[0141] According to the method in embodiment 1, descriptors are generated for all phase singularities extracted;

[0142] Selection of kernel function:

[0143] A kernel function is selected to de...

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Abstract

The invention provides an image representation method based on phase singularities. The method comprises: 2D complex filtering processing is conducted on image information, and a filter response image is generated; image phase singularities are detected and positioned precisely; and local descriptors of the phase singularities are generated as image features. The invention also provides a method for image matching and recognition using the above image representation. The image representation method effectively utilizes information of the phase singularities, and the novel image representation method is developed. There are more abundant image features, and the method increases the number of image matching points and the correct rate of matching. Thus an image classification method based on phase singularity wrapping representation is developed.

Description

technical field [0001] The invention relates to image processing technology, in particular to an image representation method, and a method for image matching and recognition using the image representation. Background technique [0002] The fast and accurate description of image information has always been an important and difficult point in the research of image matching and image recognition technology. Most of the image feature extraction methods in the prior art revolve around the color, texture, shape and spatial relationship of the image. Although these methods can describe the features of the image, they have the disadvantage of poor robustness of the obtained features. There is another existing technology based on an invariant feature description method in the transform domain. Due to the inherent properties of the transform domain, the description effect of this prior art is quite different before and after image clipping. [0003] Another existing technology uses t...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/64G06K9/66
Inventor 乔宇王星星李志锋汤晓鸥
Owner SHENZHEN INST OF ADVANCED TECH
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