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Title: A hybrid attention deep learning network for refined segmentation of cracks from shield tunnel lining images
Authors: Zhao, S 
Zhang, G
Zhang, D
Tan, D 
Huang, H
Issue Date: Dec-2023
Source: Journal of rock mechanics and geotechnical engineering, Dec. 2023, v. 15, no. 12, p. 3105-3117
Abstract: This research developed a hybrid position-channel network (named PCNet) through incorporating newly designed channel and position attention modules into U-Net to alleviate the crack discontinuity problem in channel and spatial dimensions. In PCNet, the U-Net is used as a baseline to extract informative spatial and channel-wise features from shield tunnel lining crack images. A channel and a position attention module are designed and embedded after each convolution layer of U-Net to model the feature interdependencies in channel and spatial dimensions. These attention modules can make the U-Net adaptively integrate local crack features with their global dependencies. Experiments were conducted utilizing the dataset based on the images from Shanghai metro shield tunnels. The results validate the effectiveness of the designed channel and position attention modules, since they can individually increase balanced accuracy (BA) by 11.25% and 12.95%, intersection over union (IoU) by 10.79% and 11.83%, and F1 score by 9.96% and 10.63%, respectively. In comparison with the state-of-the-art models (i.e. LinkNet, PSPNet, U-Net, PANet, and Mask R–CNN) on the testing dataset, the proposed PCNet outperforms others with an improvement of BA, IoU, and F1 score owing to the implementation of the channel and position attention modules. These evaluation metrics indicate that the proposed PCNet presents refined crack segmentation with improved performance and is a practicable approach to segment shield tunnel lining cracks in field practice.
Keywords: Channel attention
Crack disjoint problem
Crack segmentation
U-net
Position attention
Publisher: 科学出版社 (Kexue Chubanshe,Science Press)
Journal: Journal of rock mechanics and geotechnical engineering 
ISSN: 1674-7755
EISSN: 2589-0417
DOI: 10.1016/j.jrmge.2023.02.025
Rights: © 2023 Institute of Rock and Soil Mechanics, Chinese Academy of Sciences. Production and hosting by Elsevier B.V. This is an open access article under theCCBYNC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
The following publication Zhao, S., Zhang, G., Zhang, D., Tan, D., & Huang, H. (2023). A hybrid attention deep learning network for refined segmentation of cracks from shield tunnel lining images. Journal of Rock Mechanics and Geotechnical Engineering, 15(12), 3105-3117 is available at https://doi.org/10.1016/j.jrmge.2023.02.025.
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