Deep Learning Based image segmentation for expensive soil desiccation crack recognition and qualification

Expansive soils undergo significant volume changes due to moisture fluctuations, which lead to desiccation cracks formation that affect soil properties and engineering performance, compromising the safety of geo structures. The analysis of these cracks was essential for mitigating their impact; ho...

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Main Author: Ling, Hui Yean
Format: Final Year Project / Dissertation / Thesis
Published: 2025
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Online Access:http://eprints.utar.edu.my/7144/1/Dissertation_Ling_Hui_Yean.pdf
http://eprints.utar.edu.my/7144/
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_version_ 1855616540806742016
author Ling, Hui Yean
author_facet Ling, Hui Yean
author_sort Ling, Hui Yean
building UTAR Library
collection Institutional Repository
content_provider Universiti Tunku Abdul Rahman
content_source UTAR Institutional Repository
continent Asia
country Malaysia
description Expansive soils undergo significant volume changes due to moisture fluctuations, which lead to desiccation cracks formation that affect soil properties and engineering performance, compromising the safety of geo structures. The analysis of these cracks was essential for mitigating their impact; however, traditional quantification methods were labour intensive and imprecise, highlighting the need for more robust and automated techniques. This study investigated the feasibility and effectiveness of image-based techniques using advanced deep learning algorithms to quantify desiccation cracks in expansive soils. The objectives of the study included designing soil desiccation experiment setup for desiccation crack image acquisition, evaluating crack imaging analysis based on deep learning algorithms, and quantifying desiccation cracks through image processing techniques. Laboratory experiments were conducted using a custom-built image acquisition tool to capture crack images under simulated soil desiccation conditions. Crack images obtained were processed and annotated to produce a dataset of 820 images for the training and testing of deep learning models. Deep learning models, including U-Net, Res-UNet, and DeepLabv3+ with pre-trained backbones such as MobileNetV2, ResNet-18, ResNet-50, and Xception, were trained and evaluated along side a traditional Otsu's thresholding method as the baseline for crack detection and segmentation. The evaluation considered segmentation performance using evaluation metrics (precision, recall, F1 score, IoU), computational efficiency, and crack geometrical parameters quantification (surface crack ratio, crack width, crack length, and crack segment). Results demonstrated that DeepLabv3+ variants consistently outperformed other methods, with MobileNetV2 backbone offering the best balance of computational efficiency, segmentation accuracy, and robustness across case-wise performance conditions. Compared to traditional approaches, deep learning models, particularly with DeepLabv3+ variants, produced more reliable crack segmentation masks, thus enabling more accurate quantification of crack geometrical parameters, as demonstrated by lower error rates. This study validates the effectiveness of deep learning based segmentation methods for automated soil crack recognition and quantification, contributing to engineering applications with improved methodologies for analysing desiccation behaviour in expansive soils. Keywords: Civil engineering, Photographic processing, Quantitative methods, Automation, Deep Learning
format Final Year Project / Dissertation / Thesis
id my-utar-eprints.7144
institution Universiti Tunku Abdul Rahman
publishDate 2025
record_format eprints
spelling my-utar-eprints.71442026-01-13T08:26:39Z Deep Learning Based image segmentation for expensive soil desiccation crack recognition and qualification Ling, Hui Yean H Social Sciences (General) HD Industries. Land use. Labor HF Commerce Expansive soils undergo significant volume changes due to moisture fluctuations, which lead to desiccation cracks formation that affect soil properties and engineering performance, compromising the safety of geo structures. The analysis of these cracks was essential for mitigating their impact; however, traditional quantification methods were labour intensive and imprecise, highlighting the need for more robust and automated techniques. This study investigated the feasibility and effectiveness of image-based techniques using advanced deep learning algorithms to quantify desiccation cracks in expansive soils. The objectives of the study included designing soil desiccation experiment setup for desiccation crack image acquisition, evaluating crack imaging analysis based on deep learning algorithms, and quantifying desiccation cracks through image processing techniques. Laboratory experiments were conducted using a custom-built image acquisition tool to capture crack images under simulated soil desiccation conditions. Crack images obtained were processed and annotated to produce a dataset of 820 images for the training and testing of deep learning models. Deep learning models, including U-Net, Res-UNet, and DeepLabv3+ with pre-trained backbones such as MobileNetV2, ResNet-18, ResNet-50, and Xception, were trained and evaluated along side a traditional Otsu's thresholding method as the baseline for crack detection and segmentation. The evaluation considered segmentation performance using evaluation metrics (precision, recall, F1 score, IoU), computational efficiency, and crack geometrical parameters quantification (surface crack ratio, crack width, crack length, and crack segment). Results demonstrated that DeepLabv3+ variants consistently outperformed other methods, with MobileNetV2 backbone offering the best balance of computational efficiency, segmentation accuracy, and robustness across case-wise performance conditions. Compared to traditional approaches, deep learning models, particularly with DeepLabv3+ variants, produced more reliable crack segmentation masks, thus enabling more accurate quantification of crack geometrical parameters, as demonstrated by lower error rates. This study validates the effectiveness of deep learning based segmentation methods for automated soil crack recognition and quantification, contributing to engineering applications with improved methodologies for analysing desiccation behaviour in expansive soils. Keywords: Civil engineering, Photographic processing, Quantitative methods, Automation, Deep Learning 2025 Final Year Project / Dissertation / Thesis NonPeerReviewed application/pdf http://eprints.utar.edu.my/7144/1/Dissertation_Ling_Hui_Yean.pdf Ling, Hui Yean (2025) Deep Learning Based image segmentation for expensive soil desiccation crack recognition and qualification. Master dissertation/thesis, UTAR. http://eprints.utar.edu.my/7144/
spellingShingle H Social Sciences (General)
HD Industries. Land use. Labor
HF Commerce
Ling, Hui Yean
Deep Learning Based image segmentation for expensive soil desiccation crack recognition and qualification
title Deep Learning Based image segmentation for expensive soil desiccation crack recognition and qualification
title_full Deep Learning Based image segmentation for expensive soil desiccation crack recognition and qualification
title_fullStr Deep Learning Based image segmentation for expensive soil desiccation crack recognition and qualification
title_full_unstemmed Deep Learning Based image segmentation for expensive soil desiccation crack recognition and qualification
title_short Deep Learning Based image segmentation for expensive soil desiccation crack recognition and qualification
title_sort deep learning based image segmentation for expensive soil desiccation crack recognition and qualification
topic H Social Sciences (General)
HD Industries. Land use. Labor
HF Commerce
url http://eprints.utar.edu.my/7144/1/Dissertation_Ling_Hui_Yean.pdf
http://eprints.utar.edu.my/7144/
url_provider http://eprints.utar.edu.my