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Deep Learning-based Surface Crack Detection

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dc.contributor.author Nedjar, Salah eddine
dc.contributor.author Lamine, Mohammed Lamine
dc.contributor.author Brahim, Nacera /encadreur
dc.date.accessioned 2026-01-27T14:50:26Z
dc.date.available 2026-01-27T14:50:26Z
dc.date.issued 2025
dc.identifier.uri https://dspace.univ-ghardaia.edu.dz/xmlui/handle/123456789/10456
dc.description.abstract Surface crack detection is paramount for ensuring the safety and longevity of civil infrastructure. Traditional manual inspection methods are time-consuming, costly, and operator-dependent. Prior automated methods based on traditional image processing showed promise, though a step forward, but their reliance on handcrafted features and sensitivity to imaging conditions and real-world vari- ations in lighting and texture limited their global applicability. Deep learning is a more powerful tool, but achieving reliable pixel-level remains a significant challenge separation of cracks especially fine, hairline cracks, usually only a few pixels thick with low contrast and easily discarded in the downsampling stages of standard encoder-decoder frameworks; and intricate, or lengthy crack networks. The current paper proposes a better deep learning technique for this task using the UNet++ architecture. This model was chosen specifically over others due to its design strategy. Although standard U-Net innovated vital skip connections to maintain detail, UNet++ enhances that by utilizing nested and dense skip pathways to bridge the semantic gap between shallow encoder and deep decoder. This architecture is especially well-suited to marrying high-resolution spatial data with deep semantic context, which is necessary for being capable of segmenting the fine-grained crack structure accurately. Compared to architectures such as SegNet, which are efficient in terms of computations but lose boundary detail, UNet++ is high-fidelity segmentation optimized and thus is particularly well-suited to this task. The proposed UNet++ model achieved excellent quantitative re- sults: a Dice coefficient of 0.9338, an Intersection over Union (IoU) of 0.8805, an F1-score of 0.9609, precision of 0.9603, and recall of 0.9614, outper forming a baseline U-Net and other contemporary semantic segmentation methods. A prototype system demonstrated the model’s applicability for real-world crack de tection tasks. These findings indicate that the UNet++ architecture, coupled with robust data augmentation, offers a highly accurate and reliable solution for pixel level surface crack segmentation, advancing automated structural health monitoring. EN_en
dc.publisher university of Ghardaïa EN_en
dc.subject Deep Learning, Crack Detection, UNet++, Semantic Segmen- tation EN_en
dc.title Deep Learning-based Surface Crack Detection EN_en
dc.type Thesis EN_en


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