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Deep Learning Based Defect Inspection Using the Intersection Over Minimum Between Search and Abnormal Regions

机译:基于深度学习的搜索和异常区域之间的交叉口的缺陷检查

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摘要

We present a deep learning based defect inspection system that detects bounding boxes for any identified defect regions. In contrast to existing deep learning based object detection methods, the proposed method detects defects based on the intersection over minimum between a proposal region and defect regions rather than the well-known intersection over union, since intersection over minimum is more effective to detect variously sized defects. The proposed method also provides significant improvements over existing methods such as efficient training by minimizing cross entropy loss function, and efficient defect detection using multiple proposal boxes for the defect and entire image. We verified that the proposed method provides improved performance compared with existing methods using simulation and experimental studies.
机译:我们介绍了一个基于深入的学习缺陷检查系统,可检测任何识别的缺陷区域的边界框。 与现有的基于深度学习的物体检测方法相比,所提出的方法基于最小值之间的缺陷来检测到提案区域和缺陷区域之间的交叉点,而不是联盟的众所周知的交叉区,因为超过最小值的交叉更有效地检测各种尺寸。 缺陷。 该方法还通过最小化跨熵损耗功能,以及使用多个提案盒的缺陷和整个图像的高效缺陷检测,提供了对现有方法的显着改进。 我们核实所提出的方法与使用模拟和实验研究的现有方法相比提供了改进的性能。

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