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Fabric Defect Detection and Classification Using Gabor Filters and Gaussian Mixture Model

机译:使用Gabor滤波器和高斯混合模型的织物缺陷检测与分类。

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This work investigates the problem of automatic and robust fabric defect detection and classification which are more essential and important in assuring the fabric quality. Two characteristics of this work are: first, a new scheme combining Gabor filters and Gaussian mixture model (GMM) is proposed for fabric defect detection and classification. In detection, the foreground mask and texture features are extracted using Gabor filters. In classification, a GMM based classifier is trained and assigns each foreground pixel to known classes. The second characteristic of this work is the test data is actually collected from Qinfeng textile factory, China, including nine different fabric defects with more than 1000 samples. All the evaluation of our method is based on these actual fabric images and the experimental results show the proposed algorithm achieved satisfied performance.
机译:这项工作研究了自动和健壮的织物缺陷检测和分类问题,这些问题对于确保织物质量更为重要和重要。这项工作的两个特点是:首先,提出了一种结合Gabor滤波器和高斯混合模型(GMM)的新方案,用于织物缺陷检测和分类。在检测中,使用Gabor滤波器提取前景蒙版和纹理特征。在分类中,训练了基于GMM的分类器,并将每个前景像素分配给已知的类。这项工作的第二个特点是测试数据实际上是从中国秦丰纺织厂收集的,其中包括9种不同的织物缺陷以及1000多个样本。我们的方法的所有评估都是基于这些实际的织物图像,并且实验结果表明该算法取得了令人满意的性能。

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