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A Weld Defect Detection Method Based on Triplet Deep Neural Network

机译:基于三重态深度神经网络的焊接缺陷检测方法

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In industrial fields, Nondestructive Testing (NDT) has become an important method to test the quality of welds. For the low-contrast pipe weld defect x-ray image, the traditional detection method has low precision. In this paper, an automatic detection method for weld defects based on a triplet deep neural network is proposed. First, the original X-ray image is changed into a relief image, so that the feature of the defects is more obvious. Second, the feature vector is obtained by mapping the relief image through the triplet deep neural network. The deep neural network based on triplet makes the similar defect feature vectors are closer, and the distances of different defect feature vectors are farther. It is first time that the deep neural network based on triplet was used to detect the weld defect images. Finally, the weld defect was detected by Support Vector Machine (SVM) classifier. It is shown that the proposed detection method of weld defects has better performance than the conventional methods.
机译:在工业领域,无损检测(NDT)已成为测试焊缝质量的重要方法。对于低对比度的管道焊缝缺陷X射线图像,传统的检测方法精度较低。提出了一种基于三重态深度神经网络的焊接缺陷自动检测方法。首先,将原始的X射线图像改变为浮雕图像,使得缺陷的特征更加明显。其次,通过通过三重态深度神经网络映射浮雕图像来获得特征向量。基于三重态的深度神经网络使得相似的缺陷特征向量更近,不同缺陷特征向量的距离更远。首次使用基于三重态的深度神经网络来检测焊接缺陷图像。最后,通过支持向量机(SVM)分类器检测焊接缺陷。结果表明,所提出的焊缝缺陷检测方法比常规方法具有更好的性能。

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