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Fabric defect detection for apparel industry : a nonlocal sparse representation approach

机译:服装行业的面料缺陷检测:一种非本地稀疏表示方法

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摘要

With the increasing customer demand on fabric variety in fashion markets, fabric texture becomes much more diverse, which brings great challenges to accurate fabric defect detection. In this paper, a fabric inspection model, consisting of image preprocessing, image restoration, and thresholding operation, is developed to address the woven fabric defect detection problem in the apparel industry, especially for fabric with complex texture and tiny defects. The image preprocessing first improves the image contrast in order to make the details of defects more salient. Based on the learned sub-dictionaries, a non-locally centralized sparse representation model is adopted to estimate the non-defective version of the input images, so that the possible defects can be easily segmented from the residual images of the estimated images and the inputs by thresholding operation. The performance of the proposed defect detection model was evaluated through extensive experiments with various types of real fabric samples. The proposed detection model was proved to be effective and robust, and superior to some representative detection models in terms of the detection accuracy and false alarms.
机译:随着客户对时装市场上各种织物需求的增加,织物的质地变得更加多样化,这给准确的织物缺陷检测带来了巨大挑战。为了解决服装行业中机织织物的缺陷检测问题,特别是对于质地复杂,缺陷少的织物,建立了由图像预处理,图像恢复和阈值运算组成的织物检验模型。图像预处理首先改善图像对比度,以使缺陷的细节更加突出。基于学习到的子词典,采用非局部集中的稀疏表示模型来估计输入图像的无缺陷版本,以便可以容易地从估计图像的残差图像和输入中分割出可能的缺陷。通过阈值操作。通过对各种类型的真实织物样品进行广泛的实验,评估了所提出的缺陷检测模型的性能。所提出的检测模型被证明是有效和鲁棒的,并且在检测精度和错误警报方面优于一些代表性的检测模型。

著录项

  • 作者

    Tong, L; Wong, WK; Kwong, CK;

  • 作者单位
  • 年度 2017
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  • 原文格式 PDF
  • 正文语种 en
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