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Process knowledge based multi-class support vector classification (PK-MSVM) approach for surface defects in hot rolling

机译:基于工艺知识的热轧表面缺陷的多类支持向量分类(PK-MSVM)方法

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Random surface defects occur during the hot bar rolling of steels and are identified either by manual or by automated inspection techniques. Manual inspection techniques are purely based on the process knowledge of the inspector such as the location, type and kind of defects, and the primary sources of these defects. The automated techniques, to identify and classify the defects, rely on machine vision technologies and image processing algorithms based on support vector machines, wavelets, image processing and statistical inference. Both these approaches have their own advantages and limitations. To improve the accuracy of classification of these defects a process knowledge based support vector classification scheme is proposed (called PK-MSVM) which combines feature extraction task of automated inspection with the process knowledge. The defect observation data from the imaging sensor is transformed to include this process knowledge. Three attributes of the defects - length to width ratio, longitudinal location and transverse location- are used for this transformation are they are closely related to the thermo-mechanics of the rolling process. Different formulations of the multi-class support vector machines (MSVMs) are compared for this classification with or without process knowledge based transformation: one-against-one, one-against-all and Hastie's algorithm of multi class SVM. It is found that the new approach (PK-MSVM) performs better than traditional MSVM for all the three formulations. For the best case, the performance sees a jump of more than 100%. Thus incorporating process knowledge in identification and classification does increase the reliability of inspection considerably.
机译:在钢的热轧过程中会出现随机的表面缺陷,可以通过手动或自动检查技术进行识别。手动检查技术完全基于检查员的过程知识,例如缺陷的位置,类型和种类以及这些缺陷的主要来源。用于识别和分类缺陷的自动化技术依赖于基于支持向量机,小波,图像处理和统计推断的机器视觉技术和图像处理算法。这两种方法都有其自身的优点和局限性。为了提高这些缺陷分类的准确性,提出了一种基于过程知识的支持向量分类方案(称为PK-MSVM),该方案将自动检查的特征提取任务与过程知识相结合。来自成像传感器的缺陷观察数据被转换为包括该过程知识。缺陷的三个属性-长宽比,纵向位置和横向位置-用于此转换,因为它们与轧制过程的热力学密切相关。在有或没有基于过程知识的转换的情况下,针对该分类比较了多类支持向量机(MSVM)的不同公式:多类SVM的一对一,一对一和Hastie算法。结果发现,对于所有三种配方,新方法(PK-MSVM)的性能均优于传统MSVM。在最佳情况下,性能会提高100%以上。因此,将过程知识结合到识别和分类中确实可以大大提高检查的可靠性。

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