DSNet:基于计算机视觉的检测和锈蚀分割网络,用于隧道中锈蚀螺栓的检测

IF 4.6 2区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY
Lei Tan, Xiaohan Chen, Dajun Yuan, Tao Tang
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引用次数: 0

摘要

腐蚀螺栓检测已被确认为隧道结构健康监测(SHM)中的一个主要问题。然而,由于锈蚀面积较小,仅检测的方法会漏掉锈蚀的螺栓。本研究将这一任务巧妙地分为两个并行任务,即螺栓检测和像素级锈蚀分割,并通过提取两个任务的交叉点来实现目标,从而提高性能。具体而言,基于多任务学习的检测和分割网络(DSNet)可降低误检率和漏检率。在检测分支中加入了提高隧道补丁中螺栓焦点的坐标注意模块,在分割分支中采用了能更准确地确定像素是否与腐蚀区域相关的基于部分的跨阶段解码器。上述分支共享相同的主干,以简化模型。基于从真实地铁隧道中捕获的腐蚀螺栓数据集,进行了充分的比较和烧蚀实验,以证明所提算法的优越性,该数据集可在 https://github.com/StreamHXX/Tunnel-lining-disease-image 上公开获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

DSNet: A Computer Vision-Based Detection and Corrosion Segmentation Network for Corroded Bolt Detection in Tunnel

DSNet: A Computer Vision-Based Detection and Corrosion Segmentation Network for Corroded Bolt Detection in Tunnel

Corroded bolt detection has been confirmed as a major issue in the structure health monitoring (SHM) of tunnels. However, detection-only methods will miss the corroded bolts, arising from the small rust area. In this study, the task is divided ingeniously into two parallel tasks, i.e., bolt detection and pixel-level rust segmentation, and the objective is fulfilled by taking the intersection of the two tasks, with the aim of enhancing the performance. To be specific, a detection and segmentation network (DSNet) is proposed based on multitask learning, leading to reduced false and missed detection rates. The coordinate attention module enhancing the focus of bolts in tunnel patches is incorporated in the detection branch, and the cross-stage partial-based decoder which can more accurately determine whether a pixel pertains to the corrosion area is employed in the segmentation branch. The mentioned branches share the same backbone to simplify the model. Sufficient comparisons and ablation experiments are performed to prove the superiority of the proposed algorithm based on the corroded bolt dataset captured from a real subway tunnel, which is publicly available in https://github.com/StreamHXX/Tunnel-lining-disease-image.

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来源期刊
Structural Control & Health Monitoring
Structural Control & Health Monitoring 工程技术-工程:土木
CiteScore
9.50
自引率
13.00%
发文量
234
审稿时长
8 months
期刊介绍: The Journal Structural Control and Health Monitoring encompasses all theoretical and technological aspects of structural control, structural health monitoring theory and smart materials and structures. The journal focuses on aerospace, civil, infrastructure and mechanical engineering applications. Original contributions based on analytical, computational and experimental methods are solicited in three main areas: monitoring, control, and smart materials and structures, covering subjects such as system identification, health monitoring, health diagnostics, multi-functional materials, signal processing, sensor technology, passive, active and semi active control schemes and implementations, shape memory alloys, piezoelectrics and mechatronics. Also of interest are actuator design, dynamic systems, dynamic stability, artificial intelligence tools, data acquisition, wireless communications, measurements, MEMS/NEMS sensors for local damage detection, optical fibre sensors for health monitoring, remote control of monitoring systems, sensor-logger combinations for mobile applications, corrosion sensors, scour indicators and experimental techniques.
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