Drought-induced soil desiccation cracking has attracted great attention in various disciplines with the advent of global climate change. Accurately obtaining soil crack networks is essential to understand the cracking mechanism. Inspired by recent advances of artificial intelligence (AI) in computer vision, we propose a new automatic soil crack recognition method based a novel network architecture, named Attention Res-UNet. Deep Res-UNet inherits both the advantages from residual learning for training deeper networks and U-Net for semantic segmentation. Moreover, attention mechanism is utilized to alleviate the influences caused by the uneven illumination conditions. Firstly, the soil crack images under different uneven illumination conditions are collected to create a new soil cracking image dataset. Then, traditional method and multiple state-of-the-art deep learning based different semantic segmentation models are tested on our collected dataset. Finally, a professional evaluation standard, which considers both the overall metrics (precision, recall, dice, surface crack ratio) and details (crack total length, average crack width, number of crack segments) of the soil crack features is proposed to evaluate the recognition results of the different models. Extensive experimental results demonstrate the superiority of our proposed Attention Res-UNet approach compared with traditional methods and other deep learning models in recognizing soil cracks under complex environmental conditions. Our method is also suitable for crack recognition of other materials under complex environmental conditions.
%0 Journal Article
%1 Xu2022uneven
%A Xu, Jin Jian
%A Zhang, Hao
%A Tang, Chao Sheng
%A Cheng, Qing
%A gang Tian, Ben
%A Liu, Bo
%A Shi, Bin
%D 2022
%I Elsevier B.V.
%J Engineering Geology
%K Artificial cracking,Uneven desiccation gate,Deep illumination intelligence,Attention learning,Evaluation standard,Soil
%N November 2021
%P 106495
%R 10.1016/j.enggeo.2021.106495
%T Automatic soil crack recognition under uneven illumination condition with the application of artificial intelligence
%U https://doi.org/10.1016/j.enggeo.2021.106495
%V 296
%X Drought-induced soil desiccation cracking has attracted great attention in various disciplines with the advent of global climate change. Accurately obtaining soil crack networks is essential to understand the cracking mechanism. Inspired by recent advances of artificial intelligence (AI) in computer vision, we propose a new automatic soil crack recognition method based a novel network architecture, named Attention Res-UNet. Deep Res-UNet inherits both the advantages from residual learning for training deeper networks and U-Net for semantic segmentation. Moreover, attention mechanism is utilized to alleviate the influences caused by the uneven illumination conditions. Firstly, the soil crack images under different uneven illumination conditions are collected to create a new soil cracking image dataset. Then, traditional method and multiple state-of-the-art deep learning based different semantic segmentation models are tested on our collected dataset. Finally, a professional evaluation standard, which considers both the overall metrics (precision, recall, dice, surface crack ratio) and details (crack total length, average crack width, number of crack segments) of the soil crack features is proposed to evaluate the recognition results of the different models. Extensive experimental results demonstrate the superiority of our proposed Attention Res-UNet approach compared with traditional methods and other deep learning models in recognizing soil cracks under complex environmental conditions. Our method is also suitable for crack recognition of other materials under complex environmental conditions.
@article{Xu2022uneven,
abstract = {Drought-induced soil desiccation cracking has attracted great attention in various disciplines with the advent of global climate change. Accurately obtaining soil crack networks is essential to understand the cracking mechanism. Inspired by recent advances of artificial intelligence (AI) in computer vision, we propose a new automatic soil crack recognition method based a novel network architecture, named Attention Res-UNet. Deep Res-UNet inherits both the advantages from residual learning for training deeper networks and U-Net for semantic segmentation. Moreover, attention mechanism is utilized to alleviate the influences caused by the uneven illumination conditions. Firstly, the soil crack images under different uneven illumination conditions are collected to create a new soil cracking image dataset. Then, traditional method and multiple state-of-the-art deep learning based different semantic segmentation models are tested on our collected dataset. Finally, a professional evaluation standard, which considers both the overall metrics (precision, recall, dice, surface crack ratio) and details (crack total length, average crack width, number of crack segments) of the soil crack features is proposed to evaluate the recognition results of the different models. Extensive experimental results demonstrate the superiority of our proposed Attention Res-UNet approach compared with traditional methods and other deep learning models in recognizing soil cracks under complex environmental conditions. Our method is also suitable for crack recognition of other materials under complex environmental conditions.},
added-at = {2023-02-27T14:12:01.000+0100},
author = {Xu, Jin Jian and Zhang, Hao and Tang, Chao Sheng and Cheng, Qing and gang Tian, Ben and Liu, Bo and Shi, Bin},
biburl = {https://www.bibsonomy.org/bibtex/24577971246797ee3ac69079b1b657eb1/haozhangcn},
doi = {10.1016/j.enggeo.2021.106495},
file = {:F\:/OneDrive - nuaa.edu.cn/mendeley/2021-12-10_uneven.pdf:pdf},
interhash = {7cb08eb1e59f3fe1847830ddb4ef09f8},
intrahash = {4577971246797ee3ac69079b1b657eb1},
issn = {00137952},
journal = {Engineering Geology},
keywords = {Artificial cracking,Uneven desiccation gate,Deep illumination intelligence,Attention learning,Evaluation standard,Soil},
number = {November 2021},
pages = 106495,
publisher = {Elsevier B.V.},
timestamp = {2023-02-27T14:12:15.000+0100},
title = {{Automatic soil crack recognition under uneven illumination condition with the application of artificial intelligence}},
url = {https://doi.org/10.1016/j.enggeo.2021.106495},
volume = 296,
year = 2022
}