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Research on Surface Defect Detection Method of E-TPU Midsole Based on Machine Vision

机译:基于机器视觉的E-TPU中底表面缺陷检测方法研究

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In the industrial production of expanded thermoplastic polyurethane (E-TPU) midsoles, the surface defects still rely on manual inspection at present, and the eligibility criteria are uneven. Therefore, this paper proposes an E-TPU midsole surface defect detection method based on machine vision to achieve automatic detection and defect classification. The proposed method is divided into three parts: image preprocessing, block defect detection, and linear defect detection. Image preprocessing uses RGB three channel self-inspection to identify scorch and color pollution. Block defect detection uses superpixel segmentation and background prior mining to determine holes, impurities, and dirt. Linear defect detection uses Gabor filter and Hough transform to detect indentation and convex marks. After image preprocessing, block defect detection and linear defect detection are simultaneously performed by parallel computing. The false positive rate (FPR) of the proposed method in this paper is 8.3%, the false negatives rate (FNR) of the hole is 4.7%, the FNR of indentation is 2.1%, and the running time does not exceed 1.6 s. The test results show that this method can quickly and accurately detect various defects in the E-TPU midsole.
机译:在膨胀热塑性聚氨酯(E-TPU)中汁的工业生产中,表面缺陷仍然依赖于目前的手动检查,并且资格标准是不均匀的。因此,本文提出了一种基于机器视觉的E-TPU中底表面缺陷检测方法,实现自动检测和缺陷分类。该方法分为三个部分:图像预处理,块缺陷检测和线性缺陷检测。图像预处理使用RGB三通道自检来识别烧焦和色彩污染。块缺陷检测使用Superpixel分割和背景前进的挖掘来确定孔,杂质和污垢。线性缺陷检测使用Gabor滤波器和Hough变换来检测压痕和凸起标记。在图像预处理之后,通过并行计算同时执行块缺陷检测和线性缺陷检测。本文中所提出的方法的假阳性率(FPR)为8.3%,孔的假阴性率(FNR)为4.7%,压痕的FNR为2.1%,运行时间不超过1.6秒。测试结果表明,该方法可以快速准确地检测E-TPU中底的各种缺陷。

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