DAU-Net - Dense Attention U-Net for Pavement Crack Segmentation.

ITSC(2021)

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摘要
Accurately detecting pavement cracks is essential to apply preventive and effective pavement treatments in a timely manner. In this paper, we proposed the Dense Attention U-Net (DAU-Net) to achieve pixel-wise segmentation of cracks on 3D pavement images. The encoder of the DAU-Net consists of multi-stage dense blocks to improve its capability of extracting informative contextual features. To achieve precise localization of cracks in the decoder, a novel channel attention block (CAB) is proposed, which reduces noisy responses and highlight salient encoder features using the channel attention mechanism. The DAU-Net is evaluated on large-scale, real-world 3D asphalt pavement images. In the ablation study, the proposed CAB demonstrates its effectiveness with a large boost on crack segmentation precision. In the comparative study, the DAU-Net outperforms state-of-the-art semantic segmentation models from previous works. With both qualitative and quantitative evaluations, the effectiveness of the DAU-Net is verified.
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关键词
Dense Attention U-Net,3D pavement images,multistage dense blocks,channel attention block,noisy responses,channel attention mechanism,real-world 3D asphalt pavement images,crack segmentation precision,DAU-Net,pavement crack segmentation,preventive pavement treatments,salient encoder features,CAB,pixel-wise segmentation
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