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首页> 外文期刊>NDT & E International: Independent Nondestructive Testing and Evaluation >Support vector machines based defect recognition in SonicIR using 2D heat diffusion features
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Support vector machines based defect recognition in SonicIR using 2D heat diffusion features

机译:使用2D热扩散功能的SonicIR中基于支持向量机的缺陷识别

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摘要

In SonicIR, when a single short pulse of 20 or 40 kHz sound wave passes through materials with mechanical discontinuities, e.g., cracks with faying surfaces, it will ordinarily cause heating of those surfaces. This study investigates the effect of support vector machines (SVM), which is a machine-learning method based on the principle of structural risk minimization, as a classifier tool to identify defects in SonicIR image sequences. One inconel sample with a known defect has been chosen to construct the training set, and the 2D heat diffusion patterns of defect and disturbing signals at two different times during the sonic pulse have been chosen as features to be used in the classification procedure. A two stages SVM classifier has been employed to recognize defects in 80 inconel and 60 titanium samples, the results indicate that SVM is a promising tool for defect recognition in SonicIR image sequences.
机译:在SonicIR中,当20或40 kHz的单个短脉冲声波穿过具有机械不连续性的材料(例如表面平整的裂缝)时,通常会导致这些表面发热。这项研究调查了支持向量机(SVM)的效果,它是一种基于结构风险最小化原理的机器学习方法,可作为识别SonicIR图像序列中缺陷的分类器。选择了一个已知缺陷的铬镍铁合金样本来构建训练集,并且选择了声脉冲期间两个不同时间的缺陷和干扰信号的2D热扩散模式作为要在分类过程中使用的特征。一个两阶段的SVM分类器已被用来识别80个铬镍铁合金和60个钛样品中的缺陷,结果表明SVM是一种有前途的工具,可用于SonicIR图像序列中的缺陷识别。

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