Automatic Detection and Classification of Weaving Fabric Defects Based on Digital Image Processing

G. Vladimir, I. Evgen, Naing Linn Aung
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引用次数: 6

Abstract

this paper describes the detection and classification of fabric defects based on digital image processing. The work is intended to provide the higher speed and accuracy of defect detection than human vision and to find the source of the defects. At first, we find the size and position of wefts or warps from an image. Then calculate the pattern of weft and warp positions and figure out whether there is a defect or not. The patterns of weft and warp may differ based on the type of fabrics. Sample pattern of good fabric is used to detect and classify the defect of the fabric with same pattern. OpenCV library and python programming language is used for the experiment. Seven kinds of defects on the fabrics model images are detected and five real fabric images are used for the experiment. The experiment shows the result of successful defect detection with 95% rate, and it is 50% faster than human vision in fabrics density calculation.
基于数字图像处理的织造织物缺陷自动检测与分类
本文介绍了基于数字图像处理的织物疵点检测与分类方法。该工作旨在提供比人类视觉更高的缺陷检测速度和准确性,并找到缺陷的来源。首先,我们从图像中找到纬纱或经纱的大小和位置。然后计算纬经位置的图案,判断是否有缺陷。经纱和纬纱的图案可能根据织物的类型而有所不同。利用好织物的样纹,对同花纹织物的缺陷进行检测和分类。实验采用OpenCV库和python编程语言。在织物模型图像上检测出7种缺陷,并使用5幅真实织物图像进行实验。实验结果表明,缺陷检测成功率为95%,织物密度计算速度比人类视觉快50%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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