Neural network based detection of local textile defects

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摘要

A new approach for the segmentation of local textile defects using feed-forward neural network is presented. Every fabric defect alters the gray-level arrangement of neighboring pixels, and this change is used to segment the defects. The feature vector for every pixel is extracted from the gray-level arrangement of its neighboring pixels. Principal component analysis using singular value decomposition is used to reduce the dimension of feature vectors. Experimental results using this approach illustrate a high degree of robustness for the detection of a variety of fabric defects. The acceptance of a visual inspection system depends on economical aspects as well. Therefore, a new low-cost solution for the fast web inspection using linear neural network is also presented. The experimental results obtained from the real fabric defects, for the two approaches proposed in this paper, have confirmed their usefulness.

论文关键词:Defect detection,Machine vision,Automated visual inspection,Quality assurance,Neural networks

论文评审过程:Received 5 April 2002, Accepted 28 October 2002, Available online 15 March 2003.

论文官网地址:https://doi.org/10.1016/S0031-3203(03)00005-0