4.7 Article

Pavement crack detection based on transformer network

Journal

AUTOMATION IN CONSTRUCTION
Volume 145, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.autcon.2022.104646

Keywords

Pavement crack detection; Transformer network; Shadow; Dense crack

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This study proposes a novel model called Crack Transformer (CT) that combines Swin Transformer as the encoder and the decoder with all multi-layer perception (MLP) layers for automatic detection of long and complicated pavement cracks. The proposed CT model demonstrates enhanced performance based on a comprehensive investigation of training performance metrics and visualization results on three public datasets. Experimental results prove the effectiveness and robustness of the Transformer-based network for accurate pavement crack detection. This study showcases the feasibility of using a Transformer-based network for automatic robust pavement crack detection under noisy conditions.
Accurate pavement surface crack detection is essential for pavement assessment and maintenance. This study aims to improve pavement crack detection under noisy conditions. A novel model named Crack Transformer (CT), which unifies Swin Transformer as the encoder and the decoder with all multi-layer perception (MLP) layers, is proposed for the automatic detection of long and complicated pavement cracks. Based on a comprehensive investigation of training performance metrics and visualization results on three public datasets, the proposed CT model indicates enhanced performance. Experimental results prove the effectiveness and robustness of the Transformer-based network on accurate pavement crack detection. This study shows the feasibility of using a Transformer-based network for automatic robust pavement crack detection under noisy conditions.

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