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Defect detection in plain weave fabrics by yarn tracking and fully convolutional networks

机译:通过纱线跟踪和全卷积网络检测平纹织物中的缺陷

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Weaving is a highly automated industrial process. Due to small inaccuracies during the production process, different types of weave defects can occur, by which the quality of the produced fabric is heavily impaired. The defects can diminish the selling price by up to 50%. Current automated visual defect detection systems need to be adjusted by a trained operator to every new fabric, making them impractical for industrial use. We present a novel automated visual defect detection framework which localizes and tracks yarns in new and unseen fabrics without the need for tedious settings, and which consecutively detects anomalies. The detection of weave defects is based on three consecutive steps, (1) the identification of single weft and warp float-points with fully convolutional networks, (2) the tracking of single yarns based on a set of rules, and finally (3) the recognition of defects using statistical analysis.
机译:编织是高度自动化的工业过程。由于生产过程中的微小误差,会出现不同类型的编织缺陷,从而严重损害了所生产织物的质量。缺陷可以使售价降低多达50%。当前的自动视觉缺陷检测系统需要由训练有素的操作员针对每种新面料进行调整,使其在工业上不切实际。我们提出了一种新颖的自动视觉缺陷检测框架,该框架可以在不需要新设置的情况下定位和跟踪新的和看不见的织物中的纱线,并且可以连续检测异常。编织缺陷的检测基于三个连续的步骤:(1)通过完全卷积网络识别单个纬纱和经纱浮点;(2)根据一组规则跟踪单个纱线,最后(3)使用统计分析识别缺陷。

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