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首页> 外文期刊>Advances in Structural Engineering >Faster multi-defect detection system in shield tunnel using combination of FCN and faster RCNN
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Faster multi-defect detection system in shield tunnel using combination of FCN and faster RCNN

机译:结合FCN和快速RCNN的盾构隧道更快的多缺陷检测系统

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With the large-scale construction of urban subways, the detection of tunnel defects becomes particularly important. Due to the complexity of tunnel environment, it is difficult for traditional tunnel defect detection algorithms to detect such defects quickly and accurately. This article presents a deep learning FCN-RCNN model that can detect multiple tunnel defects quickly and accurately. The algorithm uses a Faster RCNN algorithm, Adaptive Border ROI boundary layer and a three-layer structure of the FCN algorithm. The Adaptive Border ROI boundary layer is used to reduce data set redundancy and difficulties in identifying interference during data set creation. The algorithm is compared with single FCN algorithm with no Adaptive Border ROI for different defect types. The results show that our defect detection algorithm not only addresses interference due to segment patching, pipeline smears and obstruction but also the false detection rate decreases from 0.371, 0.285, 0.307 to 0.0502, respectively. Finally, corrected by cylindrical projection model, the false detection rate is further reduced from 0.0502 to 0.0190 and the identification accuracy of water leakage defects is improved.
机译:随着城市地铁的大规模建设,隧道缺陷的检测变得尤为重要。由于隧道环境的复杂性,传统的隧道缺陷检测算法难以快速,准确地检测出此类缺陷。本文提出了一种深度学习FCN-RCNN模型,该模型可以快速,准确地检测出多个隧道缺陷。该算法使用Faster RCNN算法,自适应边界ROI边界层和FCN算法的三层结构。自适应边界ROI边界层用于减少数据集冗余和在创建数据集期间识别干扰的困难。将该算法与没有针对不同缺陷类型的无自适应边界ROI的单个FCN算法进行了比较。结果表明,我们的缺陷检测算法不仅解决了由于分段修补,管道涂片和阻塞引起的干扰,而且错误检测率分别从0.371、0.285、0.307降低到0.0502。最后,通过圆柱投影模型进行校正,将误检率从0.0502降低到0.0190,提高了漏水缺陷的识别精度。

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