Tire trace image feature extraction method in local gradient direction three-valued mode
An image feature extraction and local gradient technology, applied in the field of image processing, can solve the problems of complex edge texture lines, single trace color, etc., and achieve the effect of high retrieval accuracy, high average precision, and improved retrieval accuracy.
- Summary
- Abstract
- Description
- Claims
- Application Information
AI Technical Summary
Problems solved by technology
Method used
Image
Examples
Embodiment 1
[0042] The image of this embodiment comes from the applicant's self-built tire trace image database, including 30 categories of 80 images in total, 2400 pieces. Experiments have been carried out. The steps of the tire trace image feature extraction method in the local gradient direction ternary mode are as follows (see figure 1 ):
[0043] (1) Image preprocessing
[0044] From the tire trace image database, a total of 2,400 tire trace sample images of 30 categories and 80 images in each category were selected, and the size was normalized to 384×384 and gray-scaled.
[0045] (2) Feature extraction
[0046] 1) Use the Sobel edge detection method to determine the image difference G of the image along the x directionx and the image difference G in the y direction y , use the formula (1) to determine the gradient direction angle α(x,y) of each pixel in the image
[0047] α(x,y)=arctan(G y / G x ) (7)
[0048] 2) In the 3×3 neighborhood sliding window, use the local gradient di...
Embodiment 2
[0073] The image of this embodiment comes from the tire trace image database built by the applicant, including 30 categories of 80 images in total, 2400 pieces. Experiments are carried out. The steps of the tire trace image feature extraction method in the local gradient direction ternary mode are as follows:
[0074] (1) Image preprocessing
[0075] This step is the same as in Example 1.
[0076] (2) Feature extraction
[0077] 1) Use the Sobel edge detection method to determine the image difference G of the image along the x direction x and the image difference G in the y direction y , use the formula (1) to determine the gradient direction angle α(x,y) of each pixel in the image
[0078] α(x,y)=arctan(G y / G x ) (13)
[0079] 2) In the 3×3 neighborhood sliding window, use the local gradient direction ternary mode LGDTP method to determine each gradient direction angle value, and the local gradient direction ternary mode LGDTP method adds custom thresholds t, g i grea...
Embodiment 3
[0085] The image of this embodiment comes from the tire trace image database built by the applicant, including 30 categories of 80 images in total, 2400 pieces. Experiments are carried out. The steps of the tire trace image feature extraction method in the local gradient direction ternary mode are as follows:
[0086] (1) Image preprocessing
[0087] This step is the same as in Example 1.
[0088] (2) Feature extraction
[0089] 1) Use the Sobel edge detection method to determine the image difference G of the image along the x direction x and the image difference G in the y direction y , use the formula (1) to determine the gradient direction angle α(x,y) of each pixel in the image
[0090] α(x,y)=arctan(G y / G x ) (16)
[0091] 2) In the 3×3 neighborhood sliding window, use the local gradient direction ternary mode LGDTP method to determine each gradient direction angle value, and the local gradient direction ternary mode LGDTP method adds custom thresholds t, g i grea...
PUM
Abstract
Description
Claims
Application Information
- R&D Engineer
- R&D Manager
- IP Professional
- Industry Leading Data Capabilities
- Powerful AI technology
- Patent DNA Extraction
Browse by: Latest US Patents, China's latest patents, Technical Efficacy Thesaurus, Application Domain, Technology Topic, Popular Technical Reports.
© 2024 PatSnap. All rights reserved.Legal|Privacy policy|Modern Slavery Act Transparency Statement|Sitemap|About US| Contact US: help@patsnap.com