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GSBYOLO:一种用于复杂环境下道路裂缝检测的轻量级多尺度融合网络。

GSBYOLO: A lightweight Multi-Scale fusion network for road crack detection in complex environments.

作者信息

Wang Yuhao, Zhu Heran, Wang Yirong, Liu Jianping, Xie Jun, Zhao Bi, Zhao Siyue

机构信息

College of Water Conservancy and Hydropower, Sichuan Agricultural University, Yaan, Sichuan, China.

College of Information Engineering, Sichuan Agricultural University, Yaan, Sichuan, China.

出版信息

Sci Rep. 2025 Jul 22;15(1):26615. doi: 10.1038/s41598-025-11717-0.

Abstract

Timely detection and regular maintenance of road cracks are critical for road and traffic safety. However, existing detection methods face challenges such as varying target scales, large model parameters, and poor adaptability to complex backgrounds. To address these issues, this study proposes an enhanced GSB-YOLO model. Inspired by the concepts of linear transformation and long-range attention mechanisms, a lightweight network structure was designed to reduce model parameters in the backbone network, thereby improving detection efficiency. Additionally, a novel SMC2f module was introduced in the neck structure, which calculates the "energy" of each neuron in the feature map, evaluates its contribution to the detection task, and dynamically assigns weighted coefficients. This method enhances the model's detection robustness in complex backgrounds and effectively addresses the issue of insufficient emphasis on positive samples. Furthermore, through the optimization of the Path Aggregation Network (PAN) and the Bidirectional Feature Pyramid Network (BiFPN), efficient multi-scale feature fusion is achieved, further strengthening the model's capacity to represent crack features at various scales. Experimental results indicate that the proposed GSB-YOLO model improves the mean average precision (mAP) in road crack detection tasks by 3.2%, demonstrating its significant application value in road crack detection and traffic safety assurance.

摘要

及时检测和定期维护道路裂缝对于道路和交通安全至关重要。然而,现有的检测方法面临着诸如目标尺度变化、模型参数大以及对复杂背景适应性差等挑战。为了解决这些问题,本研究提出了一种增强的GSB - YOLO模型。受线性变换和长距离注意力机制概念的启发,设计了一种轻量级网络结构以减少骨干网络中的模型参数,从而提高检测效率。此外,在颈部结构中引入了一种新颖的SMC2f模块,该模块计算特征图中每个神经元的“能量”,评估其对检测任务的贡献,并动态分配加权系数。这种方法增强了模型在复杂背景下的检测鲁棒性,并有效解决了对正样本重视不足的问题。此外,通过对路径聚合网络(PAN)和双向特征金字塔网络(BiFPN)的优化,实现了高效的多尺度特征融合,进一步增强了模型在各种尺度下表示裂缝特征的能力。实验结果表明,所提出的GSB - YOLO模型在道路裂缝检测任务中提高了平均精度均值(mAP)3.2%,证明了其在道路裂缝检测和交通安全保障方面的显著应用价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a8ba/12284012/4b96144095e2/41598_2025_11717_Fig1_HTML.jpg

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