Dual attention deep learning network for automatic steel surface defect segmentation
A dual attention deep learning network is developed to classify three types of steel defects, locate their positions, and depict their shapes on the steel surface in an automatic and accurate manner. The novel pixel-level detection algorithm called DAN-DeepLabv3+ integrates a dual attention module i...
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sg-ntu-dr.10356-1625002022-10-25T07:43:42Z Dual attention deep learning network for automatic steel surface defect segmentation Pan, Yue Zhang, Limao School of Civil and Environmental Engineering Engineering::Civil engineering Crack Detection Channel Coding A dual attention deep learning network is developed to classify three types of steel defects, locate their positions, and depict their shapes on the steel surface in an automatic and accurate manner. The novel pixel-level detection algorithm called DAN-DeepLabv3+ integrates a dual attention module into the DeepLabv3+ framework in pursue of more precise segmentation results. For one thing, the dual parallel attention module helps to explicitly model rich contextual dependencies over local feature representations in the spatial and channel dimensions. For another, the popular DeepLabv3+ in an encoder-decoder architecture is useful in capturing multi-scale contextual information and sharp object boundaries. The DAN-DeepLabv3+ is applied to an available dataset containing 6666 images, where three types of steel defects are taken by high-frequency cameras and have been annotated manually. Experimental results show that, compared with other deep learning models, DAN-DeepLabv3+ based on the Xception backbone exhibits the best segmentation performance under the mean intersection over union (IoU) of 89.95% and the frequency-weighted IoU of 97.34%. Besides, the F1-score for the three kinds of defects can reach 86.90%, 99.20%, and 92.81%. From the comparative study, it has been found that the adoption of the dual attention module and DeepLabv3+ contributes to boosting the segmentation performance. The significance of the proposed hybrid model lies in the enhancement in accurately detecting single or multiple steel defects, which has proven to outperform other classical methods. Ministry of Education (MOE) Nanyang Technological University Ministry of Education Tier 1 Grants, Singapore (No. 04MNP000279C120, No. 04MNP002126C120) and the Start-Up Grant at Nanyang Technological University, Singapore (No. 04INS000423C120). 2022-10-25T07:43:42Z 2022-10-25T07:43:42Z 2022 Journal Article Pan, Y. & Zhang, L. (2022). Dual attention deep learning network for automatic steel surface defect segmentation. Computer-Aided Civil and Infrastructure Engineering, 37(11), 1468-1487. https://dx.doi.org/10.1111/mice.12792 1093-9687 https://hdl.handle.net/10356/162500 10.1111/mice.12792 2-s2.0-85119423960 11 37 1468 1487 en 04MNP000279C120 04MNP002126C12 4INS000423C120 Computer-Aided Civil and Infrastructure Engineering © 2021 Computer-Aided Civil and Infrastructure Engineering. All rights reserved. |
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Engineering::Civil engineering Crack Detection Channel Coding Pan, Yue Zhang, Limao Dual attention deep learning network for automatic steel surface defect segmentation |
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A dual attention deep learning network is developed to classify three types of steel defects, locate their positions, and depict their shapes on the steel surface in an automatic and accurate manner. The novel pixel-level detection algorithm called DAN-DeepLabv3+ integrates a dual attention module into the DeepLabv3+ framework in pursue of more precise segmentation results. For one thing, the dual parallel attention module helps to explicitly model rich contextual dependencies over local feature representations in the spatial and channel dimensions. For another, the popular DeepLabv3+ in an encoder-decoder architecture is useful in capturing multi-scale contextual information and sharp object boundaries. The DAN-DeepLabv3+ is applied to an available dataset containing 6666 images, where three types of steel defects are taken by high-frequency cameras and have been annotated manually. Experimental results show that, compared with other deep learning models, DAN-DeepLabv3+ based on the Xception backbone exhibits the best segmentation performance under the mean intersection over union (IoU) of 89.95% and the frequency-weighted IoU of 97.34%. Besides, the F1-score for the three kinds of defects can reach 86.90%, 99.20%, and 92.81%. From the comparative study, it has been found that the adoption of the dual attention module and DeepLabv3+ contributes to boosting the segmentation performance. The significance of the proposed hybrid model lies in the enhancement in accurately detecting single or multiple steel defects, which has proven to outperform other classical methods. |
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School of Civil and Environmental Engineering |
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School of Civil and Environmental Engineering Pan, Yue Zhang, Limao |
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Article |
author |
Pan, Yue Zhang, Limao |
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Pan, Yue |
title |
Dual attention deep learning network for automatic steel surface defect segmentation |
title_short |
Dual attention deep learning network for automatic steel surface defect segmentation |
title_full |
Dual attention deep learning network for automatic steel surface defect segmentation |
title_fullStr |
Dual attention deep learning network for automatic steel surface defect segmentation |
title_full_unstemmed |
Dual attention deep learning network for automatic steel surface defect segmentation |
title_sort |
dual attention deep learning network for automatic steel surface defect segmentation |
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2022 |
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https://hdl.handle.net/10356/162500 |
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1749179250851708928 |