Journal article

Vision transformer-based autonomous crack detection on asphalt and concrete surfaces

E Asadi Shamsabadi, C Xu, AS Rao, T Nguyen, T Ngo, D Dias-da-Costa

Automation in Construction | ELSEVIER | Published : 2022

Abstract

Previous research has shown the high accuracy of convolutional neural networks (CNNs) in asphalt and concrete crack detection in controlled conditions. Yet, human-like generalisation remains a significant challenge for industrial applications where the range of conditions varies significantly. Given the intrinsic biases of CNNs, this paper proposes a vision transformer (ViT)-based framework for crack detection on asphalt and concrete surfaces. With transfer learning and the differentiable intersection over union (IoU) loss function, the encoder-decoder network equipped with ViT could achieve an enhanced real-world crack segmentation performance. Compared to the CNN-based models (DeepLabv3+ a..

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University of Melbourne Researchers

Grants

Funding Acknowledgements

The authors would like to acknowledge the support of the School of Civil Engineering at the University of Sydney. The last author would like to acknowledge the SOAR fellowship from the University of Sydney. The authors acknowledge the Sydney Informatics Hub and the use of the University of Sydney's high performance computing cluster, Artemis.