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A novel multiscale-multidirectional autocorrelation approach for defect detection in homogeneous flat surfaces

机译:一种新颖的多尺度多方向自相关方法,用于均匀平面内的缺陷检测

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摘要

Defect detection in flat web surface products is a challenging task. Reliable vision-based systems for detection of defects require the suitable selection of a huge set of parameters which highly impact the performance of these systems such as image resolution/scale, size of the scanning window, feature extraction, direction of scanning, classifier type and parameters and system performance evaluation measures. This paper addresses these issues and introduces a novel multi-scale and multi-directional (MSMD) autocorrelation function (ACF)-based approach for reliable defect detection and localization in homogeneous web surfaces. The proposed approach has been experimentally tested on samples from the well-known TILDA textiles database and wall-boards. Performance evaluation using the system Precision, Recall (Sensitivity), Specificity, Accuracy, Youden's index, F-measure and Matthews correlation coefficient has shown that the MSMD ACF approach outperforms the state-of-the-art approaches like MSMD Log-Gabor filters. The MSMD ACFs approach results in better performance indicators for defect detection than the Log-Gabor based approach in addition to being about 2-6 times faster in defect detection.
机译:在平面幅材表面产品中进行缺陷检测是一项艰巨的任务。可靠的基于视觉的缺陷检测系统需要适当选择大量参数,这些参数会严重影响这些系统的性能,例如图像分辨率/比例,扫描窗口的大小,特征提取,扫描方向,分类器类型和参数和系统性能评估措施。本文解决了这些问题,并介绍了一种新颖的基于多尺度和多方向(MSMD)自相关函数(ACF)的方法,用于在均匀Web表面中进行可靠的缺陷检测和定位。该提议的方法已经在来自著名的TILDA纺织品数据库和墙板的样品上进行了实验测试。使用系统的精确度,召回率(灵敏度),特异性,准确性,尤登指数,F度量和Matthews相关系数进行的性能评估表明,MSMD ACF方法优于MSMD Log-Gabor滤波器等最新方法。与基于Log-Gabor的方法相比,MSMD ACFs方法产生的缺陷检测性能指标更好,而且缺陷检测的速度要快2-6倍。

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