Defect Detection Algorithm of Periodic Texture by Multi-metric-Multi-module Image Voting Method

Ling-Yun Zhu, Chen-Yu Wang, Yue-Ying Zhao
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Abstract

Appling deep learning network models to train and detect defects on periodic texture background images requires a large number of standard datasets. However, in the field of texture fabric defect detection, there is lack of public standard datasets, and it is pretty time-consuming and laborious to prepare a high-quality training dataset. In this study, we propose a comprehensive method combining with the characteristics of periodic texture images, which uses multiple metrics and multiple mathematical models of an image to vote and score the splitted sub-images of the image, so as to detect the locations of defects on the periodic texture image. Central to our method is subimage segmentation, Zero-Slope-RANSac(ZS-RANSac) method, Multi-metric-Multi-model Image Voting strategy, which utilizes the local consistency of image metrics existing in periodic texture by cutting images into sub-images of the same size. To obtain the basic scoring matrix of each sub-image under each model, we take the difference of the standard value of the non-defect background calculated by ZS-RANSac and all measurements of sub-image, and then combine the matrix and multiple numeration model. According to the order of the scores, a certain proportion of polymer image points are considered as outer points, which are the defect sub-images. This method completely relies on statistical strategy to make use of the periodic texture characteristics of the image, and can detect the non-lattice texture image without training data. It has a wide application prospect for the textile industry, which requires real time and lacks high-quality training datasets.
基于多度量-多模块图像投票法的周期性纹理缺陷检测算法
应用深度学习网络模型对周期性纹理背景图像进行缺陷训练和检测,需要大量的标准数据集。然而,在纹理织物缺陷检测领域,缺乏公开的标准数据集,并且要准备一个高质量的训练数据集非常耗时和费力。在本研究中,我们提出了一种综合方法,结合周期性纹理图像的特点,利用图像的多个指标和多个数学模型对图像的分裂子图像进行投票和评分,从而检测周期性纹理图像上的缺陷位置。该方法的核心是子图像分割、零斜率- ransac (ZS-RANSac)方法、多度量-多模型图像投票策略,该策略通过将图像切割成相同大小的子图像来利用周期性纹理中存在的图像度量的局部一致性。为了得到每个模型下每个子图像的基本评分矩阵,我们取ZS-RANSac计算的非缺陷背景标准值与子图像的所有测量值之差,然后将矩阵与多重计算模型相结合。根据分数的先后顺序,选取一定比例的聚合物图像点作为外点,即缺陷子图像。该方法完全依靠统计策略,利用图像的周期性纹理特征,可以在不需要训练数据的情况下检测出非点阵纹理图像。对于需要实时性且缺乏高质量训练数据集的纺织行业具有广泛的应用前景。
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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