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    基于深度学习的焊缝缺陷射线检测

    Deep learning-based radiographic detection for weld defects

    • 摘要: 为提高石油天然气管道焊缝缺陷检测的准确性与效率,利用深度学习技术对管道焊缝缺陷的射线检测图像进行自动检测。研究对焊缝图像进行预处理和分块切割,并通过改进的YOLOv7模型进行缺陷识别。模型改进包括引入坐标卷积、多尺度特征融合模块和注意力机制。结果显示,改进模型在mAP@50上提升了3.37%,显著降低了误检和漏检,提升了工业自动化和智能化水平。

       

      Abstract: To improve the accuracy and efficiency of weld defect detection in oil and natural gas pipelines, deep learning technology was used to automatically detect defects in radiographic images of pipeline welds. The research involved preprocessing and block-wise cutting of weld images, and defect identification was performed using an improved YOLOv7 model. Model improvements included the introduction of coordinate convolution, a multi-scale feature fusion module, and an attention mechanism. Results showed that the improved model increased mAP@50 by 3.37%, significantly reduced false positives and false negatives, and enhanced the level of industrial automation and intelligence.

       

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