Bridge Crack Detection Based on Attention Mechanism

Geng Chuang, Cao Li-jia
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引用次数: 0

Abstract

With the strong support of the country for bridge construction and the increase in supervision of the safety of old bridges, the visual-based bridge crack target detection has a problem of incomplete target framing due to the characteristics of the bridge crack target, reflecting the current algorithm model's poor ability to accurately identify targets. In this paper, YOLO V5 algorithm was used to address the issue of poor accuracy in bridge crack target detection, and a relevant bridge crack detection dataset was created. Three attention mechanisms, SENet, ECALayer, and CBAM, were respectively fused to improve the model's feature fusion part, and comparative experiments were conducted. The experimental results show that the improved algorithm has increased from 80.5% to 87% in mAP50-95 indicators compared to the original algorithm.
基于注意机制的桥梁裂缝检测
随着国家对桥梁建设的大力支持和对旧桥安全监管力度的加大,基于视觉的桥梁裂缝目标检测由于桥梁裂缝目标的特点,存在目标框架不完整的问题,反映了当前算法模型准确识别目标的能力较差。本文采用YOLO V5算法解决桥梁裂缝目标检测精度不高的问题,创建了相应的桥梁裂缝检测数据集。分别融合SENet、ECALayer和CBAM三种注意力机制,改进模型的特征融合部分,并进行对比实验。实验结果表明,与原算法相比,改进算法在mAP50-95指标上从80.5%提高到87%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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