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Sobel operator-based extraction method of profile and detail composite characteristic vector used for representing fabric texture

A technology of fabric texture and mixed features, applied in computing, image data processing, computer components and other directions, can solve the problems of not considering the texture period, unable to fully and carefully characterize the essential characteristics of fabric texture, and cumbersome processing methods.

Inactive Publication Date: 2012-06-13
DONGHUA UNIV
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

The report did not consider the basic cycle length of the texture period as the basis for feature extraction, did not explain the selection method of the binarization threshold, and the single feature extracted only involved the number of border point pixels, and did not clearly define the meaning of the border points The distribution of boundary points in the image
[0007] The fabric texture characterization methods involved in the above-mentioned existing literature or patents are limited to the extraction of global features for the characterization of fabric texture information, and fail to take into account both the general appearance and detailed information of fabric texture, so they cannot comprehensively and meticulously characterize the essential characteristics of fabric texture
In addition, the main feature of the above-mentioned Sobel operator texture representation method is that after the texture image is filtered by the Sobel operator, a certain threshold must be selected to realize the binarization of the image
This has two main disadvantages: one is that it is difficult to select the optimal threshold for different textures; the other is that after the image is binarized, a large amount of grayscale transition information is lost, leaving only black and full White binary information, while the texture image to be processed usually has 256 gray levels
Therefore, the above processing method is cumbersome and the features extracted on this basis cannot achieve a more adequate and appropriate representation of the texture.

Method used

the structure of the environmentally friendly knitted fabric provided by the present invention; figure 2 Flow chart of the yarn wrapping machine for environmentally friendly knitted fabrics and storage devices; image 3 Is the parameter map of the yarn covering machine
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  • Sobel operator-based extraction method of profile and detail composite characteristic vector used for representing fabric texture
  • Sobel operator-based extraction method of profile and detail composite characteristic vector used for representing fabric texture
  • Sobel operator-based extraction method of profile and detail composite characteristic vector used for representing fabric texture

Examples

Experimental program
Comparison scheme
Effect test

Embodiment 1

[0077] (1) Obtain the fabric image W, the size of which is 64×64 pixels, such as figure 2 shown.

[0078] (2) Implement Sobel operator horizontal filtering on W, and get as follows image 3 The image shown, denoted as W h .

[0079] (3) Implement Sobel operator vertical filtering on W, and get as follows Figure 4 The image shown, denoted as W v .

[0080] (4) Shannon entropy is selected as the grayscale statistics used in the calculation of all features in this example. The calculation formula of Shannon entropy is as follows:

[0081] X ( s ) = - Σ i s i 2 log 2 ( s i 2 )

[0082] (5) Calculate W h The Shannon entropy of S h , as the grayscale statistical feature of the horiz...

Embodiment 2

[0090] (1) Obtain the fabric image W, the size of which is 64×64 pixels, such as Figure 5 shown.

[0091] (2) Implement Sobel operator horizontal filtering on W, and get as follows Figure 6 The image shown, denoted as W h .

[0092] (3) Implement Sobel operator vertical filtering on W, and get as follows Figure 7 The image shown, denoted as W v .

[0093] (4) Select the mean gray value as the gray level statistics used in the calculation of all features in this example. The formula for calculating the mean gray value is as follows:

[0094] X ( s ) = 1 n Σ i = 1 n s i

[0095] (5) Calculate W h The gray mean value of S h , as the gray level statistical feature of the horizontal edge texture profile, the result is 86.84.

[0096] (...

Embodiment 3

[0103] (1) Obtain the fabric image W, the size of which is 64×64 pixels, such as Figure 8 shown.

[0104] (2) Implement Sobel operator horizontal filtering on W, and get as follows Figure 9 The image shown, denoted as W h .

[0105] (3) Implement Sobel operator vertical filtering on W, and get as follows Figure 10 The image shown, denoted as W v .

[0106] (4) Select the grayscale standard deviation as the grayscale statistics used in the calculation of all features in this example. The formula for calculating the grayscale standard deviation is as follows:

[0107] X ( s ) = 1 n - 1 Σ i = 1 n ( s i ...

the structure of the environmentally friendly knitted fabric provided by the present invention; figure 2 Flow chart of the yarn wrapping machine for environmentally friendly knitted fabrics and storage devices; image 3 Is the parameter map of the yarn covering machine
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Abstract

The invention belongs to the field of digital image processing and pattern identification, and in particular relates to a Sobel operator-based extraction method of a profile and detail composite characteristic vector used for representing fabric texture. The method comprises the following steps of: performing horizontal and vertical Sobel operator filtering processing on an original fabric image to acquire two corresponding filtering images; calculating a set of gray level statistics, which have a uniform mode and serve as two profile characteristics, of the two filtering images; simultaneously, calculating to obtain four extremal gray level statistics serving as four detail characteristics, from the two filtering images, according to a basic cycle period of the fabric texture and a traversing method, wherein the gray level statistics are consistent with that which is selected when the profile characteristic is calculated; and combining the two profile characteristics with the four detail characteristics to form the composite characteristic vector. In the composite characteristic vector, each characteristic has high complementarity; and the composite characteristic vector gives consideration to profile information and detail information of the texture and also to horizontal information and longitudinal information of the texture, and can fully describe characteristics of the fabric texture in detail.

Description

technical field [0001] The invention belongs to the field of digital image processing and pattern recognition, and in particular relates to a Sobel operator-based method for extracting feature vectors of a mixture of outline and detail for characterizing fabric texture. Background technique [0002] With the help of fabric texture characterization technology, the purposes of fabric texture parameter estimation, texture classification, fabric appearance evaluation, and defect detection can be realized. Any fabric texture contains two important information, namely general information and detail information. The overview information provides the overall rough structure and grayscale impression for human eyes or machine vision, while the detail information provides the local fine structure and grayscale impression. Therefore, in order to fully and meticulously characterize the texture structure and reflect the texture characteristics to the maximum extent, both the general appe...

Claims

the structure of the environmentally friendly knitted fabric provided by the present invention; figure 2 Flow chart of the yarn wrapping machine for environmentally friendly knitted fabrics and storage devices; image 3 Is the parameter map of the yarn covering machine
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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06K9/46G06T7/00
Inventor 步红刚汪军黄秀宝周建
Owner DONGHUA UNIV
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