Research on Weld Defect Detection and Evaluation Technology based on Deep Learning

Hanlin Geng, Zhaohui Li, Yuanyuan Zhou
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Abstract

Aiming at the problems of low efficiency and strong subjectivity in the current detection of weld defects by radiographic imaging technology, an object detection method of weld defects based on multi-channel fusion convolutional neural network is proposed. In this method, the images of weld defects are encoded and input into multiple feature extraction channels formed by parallel fusion of CNN. After that, the extracted features are fused with full connection layer and the feature vectors are output. Finally, the final output is obtained by Softmax for classification. The proposed method is verified by weld defect images in actual production. The experimental results indicate that the mAP of the multi-channel fusion convolutional neural network reaches 76.37%, and the detection accuracy of weld defects is higher than that of other network such as ResNet-50 and VGG-16. The proposed method can be applied to X-ray intelligent detection of weld defects and other scenarios.
基于深度学习的焊缝缺陷检测与评估技术研究
针对目前射线成像技术检测焊缝缺陷效率低、主观性强的问题,提出了一种基于多通道融合卷积神经网络的焊缝缺陷目标检测方法。该方法对焊缝缺陷图像进行编码,输入到由CNN并行融合形成的多个特征提取通道中。然后将提取的特征与全连接层融合,输出特征向量。最后通过Softmax得到最终输出进行分类。通过实际生产中的焊缝缺陷图像验证了该方法的有效性。实验结果表明,多通道融合卷积神经网络的mAP达到76.37%,对焊缝缺陷的检测精度高于ResNet-50和VGG-16等网络。该方法可应用于焊缝缺陷的x射线智能检测等场景。
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