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Unsupervised Local Defect Segmentation in Textures Using GaborFilters. Application to industrial inspection

机译:使用Gaborfilters的纹理中的无监督当地缺陷分割。应用于工业检验

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Surface defect detection is an important task of industrial inspection that has traditionally relied on trained human vision. Automated and objective inspection methods based on image analysis have played a decisive role in the industrial progress of the last decades. We propose a new unsupervised novelty detection method for defect segmentation in textures. It uses a multiresolution Gabor filter scheme and shows the following properties: no need of any defect-free references or a training stage; any adjustable parameters, and applicability to both random and periodic textures. We apply the odd part of Gabor filters to the sample image, analyze the details obtained at different scales and orientations, and extract a number of background texture features from the sample under inspection. In the analysis, we assume that the wavelet coefficients of pixels can be suitably fitted by Gaussian mixtures, more specifically, by combining two normal distributions. One of them would correspond to the background texture whereas the other would account for the defective area. Since all the information is obtained from the sample image itself, the threshold selection is robust against possible sample to sample fluctuations such as heterogeneities in the material, inplane positioning errors, scale variations and lack of homogeneous illumination. The efficacy of the statistical analysis is demonstrated. The method is applied to a variety of samples that exhibit either periodic or random texture. A comparison with other unsupervised method designed for defect segmentation in periodic textures is done.
机译:表面缺陷检测是传统上依赖于培训的人类视力的工业检验的重要任务。基于图像分析的自动化和客观检查方法在过去几十年的工业进步方面发挥了决定性作用。我们提出了一种新的无监督的新颖性检测方法,用于纹理中的缺陷细分。它使用多分辨率Gabor过滤器方案,并显示以下属性:不需要任何无缺陷的参考或培训阶段;任何可调节的参数,以及适用于随机和周期性的纹理。我们将奇数部分的奇数部分应用于样本图像,分析在不同的尺度和方向上获得的细节,并在检查下提取来自样本的许多背景纹理特征。在分析中,我们假设像素的小波系数可以通过高斯混合物适当地装配,更具体地,通过组合两个正态分布。其中一个将对应于背景纹理,而另一个将占缺陷区域。由于所有信息从样本图像本身获得,因此阈值选择对于可能的样本是鲁棒的,以进行采样的样本,以采样诸如材料中的异质性,进入平面定位误差,比例变化和均匀照射的均匀的样本。证明了统计分析的功效。该方法应用于具有周期性或随机纹理的各种样品。完成了与定期纹理中设计用于缺陷分割的其他无监督方法的比较。

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