2024
DOI: 10.3390/s24217076
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Local–Global Feature Adaptive Fusion Network for Building Crack Detection

Yibin He,
Zhengrong Yuan,
Xinhong Xia
et al.

Abstract: Cracks represent one of the most common types of damage in building structures and it is crucial to detect cracks in a timely manner to maintain the safety of the buildings. In general, tiny cracks require focusing on local detail information while complex long cracks and cracks similar to the background require more global features for detection. Therefore, it is necessary for crack detection to effectively integrate local and global information. Focusing on this, a local–global feature adaptive fusion networ… Show more

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