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Weld defect classification using 1-D LBP feature extraction of ultrasonic signals

机译:使用超声信号的1-D LBP特征提取焊接缺陷分类

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摘要

A method based on the one-dimensional local binary pattern (1-D LBP) algorithm to extract features of ultrasonic defect signals and perform multi-class defect classification was proposed. The ultrasonic defect echo signals were first decomposed into wavelet coefficients by the wavelet packet decomposition. The 1-D LBP algorithm was employed to extract LBP features of components at low and high frequencies, respectively. Subsequently, these LBP statistical feature sets were regarded as feature vectors of defect classification. Weld defects were then classified automatically by using the radial basis function support vector machine. Defects of slag inclusion, porosity and incomplete penetration in a steel plate butt weld were used for experiments and feature extraction and defect classification were performed. The results show that the class separability of 1-D LBP features used for defect classification is superior to that of the traditional features. Moreover, the accuracy of defect classification reached 98.3%, providing an efficient tool for ultrasonic defect classification.
机译:提出了一种基于一维局部二进制模式(1-D LBP)算法来提取超声缺陷信号特征的方法,并进行多级缺陷分类。超声缺陷回波信号通过小波分组分解首先分解为小波系数。使用1-D LBP算法分别以低频率和高频提取组件的LBP特征。随后,这些LBP统计特征集被视为缺陷分类的特征向量。然后通过使用径向基功能支持向量机自动对焊接缺陷自动进行分类。钢板对接焊接中的熔渣,孔隙率和不完全穿透的缺陷用于实验,并进行特征提取和缺陷分类。结果表明,用于缺陷分类的1-D LBP功能的阶级可分离性优于传统特征。此外,缺陷分类的准确性达到98.3%,为超声缺陷分类提供了一种有效的工具。

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