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Weld Defect Detection Based on Improved Faster R-CNN Method
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Li-qiong CHEN1, Hou-jin MEI1, Hong-xuan HU2, Kui ZHAO1
Science Technology and Engineering | 2025, 25(5) : 2027 - 2033
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Science Technology and Engineering | 2025, 25(5): 2027-2033
Papers·Automation and Computational Technology
Weld Defect Detection Based on Improved Faster R-CNN Method
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Li-qiong CHEN1, Hou-jin MEI1, Hong-xuan HU2, Kui ZHAO1
Affiliations
  • 1 National Key Laboratory of Oil and Gas Reservoir Geology and Exploitation, Southwest Petroleum University, Chengdu 610500, China
  • 2 Southwest Pipeline Co., Ltd., PipeChina, Chengdu 610000, China
Published: 2025-02-18 doi: 10.12404/j.issn.1671-1815.2402648
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Weld defects present within pipelines constitute a considerable threat for leakage and rupture accidents. To elevate the detection precision of these defects, X-ray inspection was employed as a means to identify and locate them with greater accuracy. However, the diverse types, small sizes, and complex backgrounds of weld defects posed challenges for accurate detection. To address the limitations of current deep learning-based models, such as inadequate adaptability to complex backgrounds and lighting variations, as well as poor performance in detecting small targets, an improved faster region convolutional neural networks(Faster R-CNN) network model was investigated. This model incorporated a channel attention mechanism into the backbone network, modified the residual block structure, and employed ROI Align to replace the traditional ROI Pooling. The results show that compared to the original algorithm, the improved Faster R-CNN model achieves significant improvements in mean average precision (mAP) and F1, with respective increases of 15.82% and 16.44%. It is concluded that this improved model can meet the high-precision requirements for weld defect detection and holds significant theoretical importance as well as promising prospects for engineering applications.

deep learning  /  defect detection  /  X-ray image  /  Faster R-CNN
Li-qiong CHEN, Hou-jin MEI, Hong-xuan HU, Kui ZHAO. Weld Defect Detection Based on Improved Faster R-CNN Method[J]. Science Technology and Engineering, 2025 , 25 (5) : 2027 -2033 . DOI: 10.12404/j.issn.1671-1815.2402648
Year 2025 volume 25 Issue 5
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Article Info
doi: 10.12404/j.issn.1671-1815.2402648
  • Receive Date:2024-04-12
  • Online Date:2025-07-29
  • Published:2025-02-18
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  • Received:2024-04-12
  • Revised:2024-11-18
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    1 National Key Laboratory of Oil and Gas Reservoir Geology and Exploitation, Southwest Petroleum University, Chengdu 610500, China
    2 Southwest Pipeline Co., Ltd., PipeChina, Chengdu 610000, China
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表12种不同金属材料的力学参数

Family
属数
Number of
genus
种数
Number of
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占总种数比例
Percentage of
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种数
Number of
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Percentage of total
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鹅膏菌科Amanitaceae 2 11 5.26 鹅膏菌属 Amanita 10 4.78
小菇科 Mycenaceae 2 12 5.74 丝盖伞属 Inocybe 5 2.39
多孔菌科 Polyporaceae 8 14 6.70 蜡蘑属 Laccaria 5 2.39
红菇科 Russulaceae 3 23 11.00 小皮伞属 Marasmius 6 2.87
小菇属 Mycena 11 5.26
光柄菇属 Pluteus 5 2.39
红菇属 Russula 17 8.13
栓菌属 Trametes 5 2.39
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