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Crack Segmentation

Crack segmentation in computer vision involves identifying and delineating cracks or fractures in various types of surfaces, such as roads, pavements, walls, or infrastructure. This task is crucial for infrastructure maintenance, as it helps in assessing the condition of structures and planning repairs.

Papers

Showing 5160 of 63 papers

TitleStatusHype
Context-CrackNet: A Context-Aware Framework for Precise Segmentation of Tiny Cracks in Pavement images0
Optimized Hybrid Focal Margin Loss for Crack Segmentation0
CrackESS: A Self-Prompting Crack Segmentation System for Edge Devices0
Recovering compressed images for automatic crack segmentation using generative models0
RHA-Net: An Encoder-Decoder Network with Residual Blocks and Hybrid Attention Mechanisms for Pavement Crack Segmentation0
Robust feature knowledge distillation for enhanced performance of lightweight crack segmentation models0
SCNet: A Generalized Attention-based Model for Crack Fault Segmentation0
Cracks in concrete0
CrackUDA: Incremental Unsupervised Domain Adaptation for Improved Crack Segmentation in Civil Structures0
CrossDiff: Diffusion Probabilistic Model With Cross-conditional Encoder-Decoder for Crack Segmentation0
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