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http://hdl.handle.net/10397/114765
| Title: | Self-evolving prompting segment anything model for crack segmentation through data-driven cyclic conversations | Authors: | Zhou, Z Hu, W Xu, G Dong, Y |
Issue Date: | Nov-2025 | Source: | Advanced engineering informatics, Nov. 2025, v. 68, pt. A, 103626 | Abstract: | Recent advancements in large-scale segmentation models, notably the SAM (Segment Anything Model), have significantly impacted the domain of image segmentation. Despite these advancements, crack segmentation remains a challenging task due to the irregular and unstructured characteristics of crack patterns, which often necessitate extensive manual prompting. To address this issue, we introduce a novel self-autonomous prompting framework for SAM, named SepSAM, specifically designed for crack segmentation applications. Rather than relying on a large model with substantial training demands, SepSAM novelly employs a lightweight crack detection model as a prompting agent, allowing the SAM to effectively interpret crack patterns. Comparative analyses reveal that the proposed method achieves notable improvements in recall (approximately 5 % for cracks wider than 20 pixels) and surpasses existing similar methods in overall performance metrics. Comprehensive ablation studies confirm the efficacy of the proposed adaptation. With a total trainable parameter size of less than 7 MB, SepSAM is particularly well-suited for on-site bridge and pavement inspection deployments. | Keywords: | Crack segmentation Infrastructure inspection Large segmentation model Multi-model fusion Overfitting control |
Publisher: | Elsevier | Journal: | Advanced engineering informatics | EISSN: | 1474-0346 | DOI: | 10.1016/j.aei.2025.103626 |
| Appears in Collections: | Journal/Magazine Article |
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