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Weld Defect Detection From Imbalanced Radiographic Images Based on Contrast Enhancement Conditional Generative Adversarial Network and Transfer Learning

机译:基于对比度增强条件生成对抗网络和转移学习的基于对比度射线照相图像焊接缺陷检测

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摘要

When a sensor data-based detection method is used to detect the potential defects of industrial products, the data are normally imbalanced. This problem affects improvement of the robustness and accuracy of the defect detection system. In this work, welding defect detection is taken as an example: based on imbalanced radiographic images, a welding defect detection method using generative adversarial network combined with transfer learning is proposed to solve the data imbalance and improve the accuracy of defect detection. First, a new model named contrast enhancement conditional generative adversarial network is proposed, which is creatively used as a global resampling method for data augmentation of X-ray images. While solving the limitation of feature extraction due to low contrast in some images, the data distribution in the images is balanced, and the number of the image samples is expanded. Then, the Xception model is introduced as a feature extractor in the target network for transfer learning, and based on the obtained balanced data, fine-tuning is performed through frozen-unfrozen training to build the intelligent defect detection model. Finally, the defect detection model is used to detect five types of welding defects, including crack, lack of fusion, lack of penetration, porosity, and slag inclusion; an F1-score of 0.909 and defect recognition accuracy of 92.5% are achieved. The experimental results verify the effectiveness and superiority of the proposed defect detection method compared to conventional methods. For other similar applications to defect detection, the proposed method has promotional value.
机译:当使用传感器数据的检测方法来检测工业产品的潜在缺陷时,数据通常是不平衡的。这个问题会影响缺陷检测系统的鲁棒性和准确性的提高。在这项工作中,采用焊接缺陷检测作为示例:基于不平衡的放射线图像,提出了一种使用生成对抗网络与转移学习结合转移学习的焊接缺陷检测方法,以解决数据不平衡并提高缺陷检测的准确性。首先,提出了一种名为对比度增强条件生成的对比度的新模型,其创造性地用作X射线图像的数据增强的全局重采样方法。虽然在某些图像中求解特征提取的限制,但是在图像中的低对比度,图像中的数据分布是平衡的,并且图像样本的数量被扩展。然后,将Xcepion模型作为目标网络中的特征提取器引入用于传输学习,并且基于所获得的平衡数据,通过冻结的解压缩训练来执行微调,以构建智能缺陷检测模型。最后,缺陷检测模型用于检测五种类型的焊接缺陷,包括裂纹,融合缺乏,缺乏渗透,孔隙率和熔渣夹杂物;实现了0.909的F1分数,缺陷识别精度为92.5%。与常规方法相比,实验结果验证了所提出的缺陷检测方法的有效性和优越性。对于其他类似的应用来缺陷检测,所提出的方法具有促销价值。

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