Yapeng Guo, Yang Xu, Hongtao Cui, Minghao Dang, Shunlong Li
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引用次数: 0
摘要
高精度裂缝分割对于分析和保持结构的表面状态至关重要。大型视觉模型(如任何分割模型(SAM))因其显著的泛化能力,在物体分割方面取得了重大进展。然而,SAM 无法直接用于自动裂缝分割。本研究引入了一种新方法,通过结合低秩适应(LoRA)对 SAM 进行微调,使其专门用于裂缝分割。这种方法是在 SAM 中添加一个专用的裂缝分割头,从而实现自动裂缝分割。此外,LoRA 技术的应用还有助于重新调整 SAM 的功能,而无需承担通常与微调整个网络相关的巨额成本。通过与当前领先的裂纹分割模型进行比较分析,结果表明,在八个不同的裂纹数据集上,SAM 的准确性有了显著提高。这项研究为应用大型视觉模型进行裂纹识别提供了指导。
Segment anything model-based crack segmentation using low-rank adaption fine-tuning
High-precision crack segmentation is crucial for analyzing and maintaining the apparent state of structures. The introduction of large vision models, such as the segment anything model (SAM), has brought significant advancements in object segmentation due to their remarkable generalization capabilities. However, SAM cannot be directly used for the purpose of automatic crack segmentation. This study introduces a novel approach that fine-tunes SAM specifically for crack segmentation by incorporating low-rank adaptation (LoRA). This method involves adding a dedicated crack segmentation head to SAM, enabling automatic crack segmentation. Additionally, the application of LoRA technology facilitates the readjustment of SAM’s features without incurring the substantial costs typically associated with fine-tuning entire networks. A comparative analysis with current leading crack segmentation models demonstrated a significant increase in accuracy across eight different crack datasets. This study offers guidelines for the application of large vision models for crack identification.