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    MA Jinxin, DU Weixin, YUAN Hao, ZHAO Yifei, YANG Xuecai. Large-scale special equipment table defects detection based on UAV intelligent vision[J]. Nondestructive Testing, 2023, 45(12): 68-73. DOI: 10.11973/wsjc202312013
    Citation: MA Jinxin, DU Weixin, YUAN Hao, ZHAO Yifei, YANG Xuecai. Large-scale special equipment table defects detection based on UAV intelligent vision[J]. Nondestructive Testing, 2023, 45(12): 68-73. DOI: 10.11973/wsjc202312013

    Large-scale special equipment table defects detection based on UAV intelligent vision

    • To solve the problem of surface defect detection in inaccessible parts of large-scale special equipment, a method using unmanned aerial vehicle (UAV) to detect and identify surface cracks was proposed. Firstly, a UAV detection device equipped with a dual pan-tilt-zoom (PTZ) platform was used to comprehensively collect surface images of the tank farm cofferdam walls and high-altitude building walls; Then, the Faster R-CNN deep learning neural network algorithm was used to classify the collected images and detect whether there were cracks or defects in the images; Finally, morphological processing on the detected crack target box area was performed. The detection results showed that the Faster R-CNN algorithm had a crack detection accuracy of 95.74%, with a crack width recognition error of about 3.9% and a length error of about 5.3%. It had achieved remote automated detection of the tank farm cofferdam wall and high-altitude building wall.
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