AN INDUSTRIAL INSPECTION APPROACH FOR WELD DEFECTS USING MACHINE LEARNING ALGORITHM

K. Selvi, D. JohnAravindar
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引用次数: 3

Abstract

The weld defects are formed due to the incorrect welding patterns or wrong welding process. The defects in the weld may vary from size, shape and their projected quality. The most common weld defects occur during welding process is slag inclusions, porosity, lack of fusion and incomplete penetration. In this study, an effective method for weld defect classification using machine learning algorithm is presented. The system uses Speeded-up Robust Features (SURF) for feature extraction and one of the machine learning algorithms called Auto-Encoder Classifier (AEC) for classification. Initially, the features that distinguish weld defects and no defects in the weld image are extracted by SURF. Then, AEC is analyzed for weld image classification using different number of neurons in different hidden layers (2 and 3 hidden layers). The performance of the system is evaluated by GD X-ray weld image database. The results show that the weld images are correctly classified with 98% accuracy using SURF and AEC.
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基于机器学习算法的焊接缺陷工业检测方法
焊接缺陷是由于不正确的焊接模式或错误的焊接工艺造成的。焊缝缺陷的大小、形状及其投影质量各不相同。焊接过程中最常见的焊接缺陷是夹渣、气孔、未熔合和未焊透。本文提出了一种利用机器学习算法进行焊缝缺陷分类的有效方法。该系统使用加速鲁棒特征(SURF)进行特征提取,并使用一种称为自动编码器分类器(AEC)的机器学习算法进行分类。首先,利用SURF提取焊缝图像中区分焊缝缺陷和无缺陷的特征。然后,分析了AEC在不同隐藏层(2层和3层)使用不同数量的神经元对焊缝图像进行分类。利用GD x射线焊缝图像数据库对系统的性能进行了评价。结果表明,利用SURF和AEC对焊缝图像进行分类的准确率达到98%。
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