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收藏DataCite Commons2026-01-20 更新2026-05-05 收录
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This paper proposes a multi-stage spatial perception and detail enhancement road damage detection model. A hybrid attention module for spatial perception and detail enhancement is designed. Through the collaborative mechanism of global direction perception and detail enhancement, long-range spatial dependencies are constructed, and the ability to represent the details of weak textures and blurred edges is significantly improved. A cross-scale feature cross-fusion module is constructed to optimize the network neck architecture to achieve heterogeneous cascaded fusion of cross-scale features, effectively balancing the collaborative expression of local spatial details and global semantic information. In addition, the improved C3K2 module embeds coordinate-aware convolution, effectively optimizing the spatial coupling modeling efficiency of high-dimensional features through spatial information enhancement. System experiments on the RDD2022 benchmark dataset show that the model in this paper effectively identifies various road damages, maintaining a real-time inference speed of 142 FPS while achieving an improvement of 1.9% in mAP@0.5, 4.9% in mAP@0.5:0.95, and 1.8% in F1-Score compared to the existing optimal methods. The mAP@0.5 reaches 87.7%. Ablation experiments verify the contribution of each module. Cross-dataset testing and generalization testing further confirm the excellent detection robustness and engineering applicability of this model.
提供机构:
Science Data Bank
创建时间:
2026-01-20



