基于Gabor滤波和张量低秩恢复的织物缺陷检测

Guangshuai Gao, Chaodie Liu, Zhoufeng Liu, Chunlei Li, Ruimin Yang
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引用次数: 2

摘要

织物疵点检测是纺织品质量控制的关键环节。现有的织物疵点检测方法适应性不足,检测性能较差。提出了一种基于Gabor滤波和张量低秩恢复的织物缺陷检测方法。无疵点的织物图像具有明确的方向,而疵点破坏了织物图像方向的规律性。因此,织物疵点的方向特征是弯曲的。对于不同种类的织物图像,其方向信息也是不同的。为了对各种织物图像的方向信息进行表征,我们采用了一组Gabor方向滤波器来提取方向信息,并生成了Gabor方向滤波图。然后,根据张量恢复(ADMM-TR)技术,提出了一种高效的TRPCA模型,将所有特征映射的特征向量叠加生成的特征张量,通过乘法器的交替方向方法分解为一个低秩张量和一个稀疏张量。最后,通过改进的自适应阈值分割算法对稀疏张量部分生成的显著性图进行分割,定位缺陷区域。实验结果表明,我们的算法优于目前最先进的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fabric Defect Detection Based on Gabor Filter and Tensor Low-Rank Recovery
Fabric defect detection plays a curial step in the quality control of textiles. Existing fabric defect detection methods are lack of adaptability and have a poor detection performance. A novel fabric defect detection method based on Gabor filter and tensor low-rank recovery was proposed in this paper. Defect-free fabric images have the specified direction, while defects damage their regularity of direction. Therefore, the direction feature is curial for fabric defect detection. For different kinds of fabric image, the direction information is also distinct. In order to characterize the direction information for all kinds of fabric image, we adopted a bank of Gabor directional filters to extract directional information, and generated the directional Gabor filtered maps. Thereafter, an efficient TRPCA model is proposed to decompose the feature tensor which is generated by stacking the feature vector of all the feature maps into a low-rank tensor and a sparse tensor by the alternating direction method of multipliers according to the tensor recovery (ADMM-TR) techniques. Finally, the saliency map generated by the sparse tensor part is segmented via the improved adaptive thresholding algorithm to locate the defective regions. Experimental results demonstrate that our algorithm is superior to the state-of-the-art.
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