Average Blurring-based Anomaly Detection for Vision-based Mask Inspection Systems

Hyo-chan Lee, Heoncheol Lee
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引用次数: 1

Abstract

When facial masks are produced, various types of defects may appear on mask filters. These defects may include the hair of the inspectors and unexpected raw materials in the production processes. This paper proposes a new method for detecting anomaly regardless of the size and shape of defects. The proposed method uses two-step image processing to detect anomaly. The first step is to use Average Blurring on the mask filter image for image blurring. The most important thing in this step is the kernel size of the Average Blurring is increased to extend the pixel value with defects to the surrounding pixels. In the second step, the Pearson correlation coefficient between the normal mask filter image and the input mask filter image is used according to kernel size. The larger the kernel size of Average Blurring, the lower their correlation coefficient. If the correlation coefficient at a particular kernel size is lower than the threshold value, it is decided as defective image.
基于平均模糊的视觉掩模检测系统异常检测
在生产面膜时,面膜滤镜上可能会出现各种类型的缺陷。这些缺陷可能包括检验员的头发和生产过程中意外的原材料。本文提出了一种不考虑缺陷大小和形状的异常检测新方法。该方法采用两步图像处理来检测异常。第一步是在蒙版滤镜图像上使用平均模糊来进行图像模糊。这一步最重要的是增加平均模糊的核大小,将有缺陷的像素值扩展到周围的像素。第二步,根据核大小,使用正常掩模滤波图像与输入掩模滤波图像之间的Pearson相关系数。平均模糊的核大小越大,它们的相关系数越低。如果特定核大小的相关系数低于阈值,则判定该图像为缺陷图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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