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首页> 外文期刊>Journal of Industrial Textiles >A thermal-based defect classification method in textile fabrics with K-nearest neighbor algorithm
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A thermal-based defect classification method in textile fabrics with K-nearest neighbor algorithm

机译:基于K近邻算法的纺织品热缺陷分类方法

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摘要

In this study, fabric defects have been detected and classified from a video recording captured during the quality control process. Fabric quality control system prototype has been manufactured and a thermal camera was located on the quality control machine. The defective areas on the fabric surface were detected using the heat difference occurring between the defective and defect-free zones. Gray level co-occurrence matrix is used for feature extraction for defective images. The defective images are classified by k-nearest neighbor algorithm. The image processing stage consists of wavelet, threshold, and morphological operations. The defects have been classified with an average accuracy rate of 96%. In addition, the location of the defect has been identified and the defect type and location are recorded during the process via specially designed image processing interface. According to the experimental results, the proposed method works effectively.
机译:在这项研究中,已经从质量控制过程中捕获的视频记录中检测出织物缺陷并将其分类。织物质量控制系统原型已经制造出来,并且热像仪位于质量控制机器上。利用在缺陷区域和无缺陷区域之间产生的热差来检测织物表面上的缺陷区域。灰度共生矩阵用于缺陷图像的特征提取。通过k最近邻算法对缺陷图像进行分类。图像处理阶段包括小波,阈值和形态运算。已对缺陷进行了分类,平均准确率为96%。此外,通过特殊设计的图像处理界面,可以识别缺陷的位置,并在处理过程中记录缺陷的类型和位置。根据实验结果,该方法是有效的。

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