Intelligent Detection of Road Cracks Based on Improved YOLOv5
Zhiyan Zhou,
Xiaoyu Yu,
Yuji Iwahori
et al.
Abstract:With the gradual increase of highway coverage, the frequency of road cracks also increases, which brings a series of security risks. It is necessary to detect road cracks, but the traditional detection method is inefficient and unsafe. In this paper, deep learning is used to detect road cracks, and an improved model BiTrans-YOLOv5 is proposed. We add Swin Transformer to YOLOv5s to replace the original C3 module, and explore the performance of Transformer in the field of road crack detection. We also change the… Show more
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