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An Improved YOLOv5 Crack Detection Method Combined With Transformer | IEEE Journals & Magazine | IEEE Xplore

An Improved YOLOv5 Crack Detection Method Combined With Transformer


Abstract:

Efficient detection of pavement cracks can effectively prevent traffic accidents and reduce pavement maintenance costs. In order to overcome the complicated and uneconomi...Show More

Abstract:

Efficient detection of pavement cracks can effectively prevent traffic accidents and reduce pavement maintenance costs. In order to overcome the complicated and uneconomical disadvantages of traditional crack detection methods, this paper introduces a pavement crack detection network based on deep learning, which can automatically detect pavement cracks and achieves excellent detection accuracy. And the network can easily use the sensors to collect data to facilitate industrial applications. In additional, considering that most cracks have slim feature, we apply the latest Transformer module in the network to improve the effect of cracks detection. Transformer has a strong ability to capture the long-range dependence of the cracks, which enables the network to learn the context information of the crack region. Furthermore, the network also utilizes some techniques to improve the ability of algorithm to detect various cracks. Our network is trained on pavement data sets containing India, the Czech Republic and Japan. It achieved F1 scores of 0.6739 and 0.6650 on two online test sets with fewer network parameters.
Published in: IEEE Sensors Journal ( Volume: 22, Issue: 14, 15 July 2022)
Page(s): 14328 - 14335
Date of Publication: 13 June 2022

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