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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Automatic detection and classification of the ceramic tiles' surface defects
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Automatic detection and classification of the ceramic tiles' surface defects

机译:陶瓷砖表面缺陷的自动检测和分类

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摘要

Defect detection and classification of ceramic tile surface defects occurred in firing units are usually performed by human observations in most factories. In this paper, an automatic image processing system with high accuracy and time efficient approaches is presented. To this end, first, for defect detection, Rotation Invariant Measure of Local Variance (RIMLV) operator from statistical methods is employed for defect edges detection, and cooperatively a Close morphological operator from structural methods is used to fill and smooth detected regions. Then, all the detected defects of one ceramic tile are labeled, and the corresponding geometric features are extracted. Finally, a multi-class support vector machine classifier with winner-takes-all strategy based on statistical pattern recognition theories is employed to identify the defect type.
机译:在大多数工厂,烧制单元中出现的瓷砖表面缺陷的检测和分类通常由人工观察进行。本文介绍了一种高精度、高时效的自动图像处理系统。为此,首先,对于缺陷检测,采用统计方法中的旋转不变局部方差测度(RIMLV)算子进行缺陷边缘检测,并协同使用结构化方法中的一个紧密形态学算子来填充和平滑检测区域。然后,对一块瓷砖的所有检测缺陷进行标记,并提取相应的几何特征。最后,基于统计模式识别理论,采用赢家通吃策略的多类支持向量机分类器识别缺陷类型。

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