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An Efficient Weld Image Classification System Using Wavelet And Support Vector Machine

机译:使用小波和支持向量机的高效焊接图像分类系统

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A weld defect is a flaw occurs during the weldment. These defects are unavoidable during welding process. In this paper, an efficient weld image classification system for the classification of weld images into defect or no defect is presented. It uses GD X-ray weld image database for the evaluation. Discrete Wavelet Transform (DWT) is applied to GD X-ray weld images to obtain the wavelet coefficients of low and high frequencies. Then, energy and entropy features are computed. Support Vector Machine (SVM) classifier with different kernels is used for classification of flaw images into defect or no defect. Result show that DWT and SVM classifier provides 95% accuracy for weld image classification.
机译:焊接缺陷是焊接期间发生的缺陷。在焊接过程中,这些缺陷是不可避免的。本文提出了一种有效的焊接图像分类系统,用于将焊接图像分类为缺陷或没有缺陷。它使用GD X射线焊接图像数据库进行评估。将离散小波变换(DWT)应用于GD X射线焊接图像以获得低频和高频的小波系数。然后,计算能量和熵特征。支持向量机(SVM)分类器具有不同内核的分类,用于将漏洞图像分类为缺陷或没有缺陷。结果表明,DWT和SVM分类器为焊接图像分类提供了95%的精度。

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