Abstract
AbstractWhen a severe natural disaster occurs, the extraction of post-disaster building damage information is one of the methods to quickly obtain disaster information. The increasingly mature high-resolution remote sensing technology provides a solid foundation for obtaining information about building damage. To address the issues with inaccurate building positioning in existing building damage assessment methods, as well as poor classification due to similar minor and major damage characteristics in building damage classification. Based on U-Net, we designed a two-stage building damage assessment network. The first stage is an independent U-Net focused on building segmentation, followed by a Siamese U-Net focused on building damage classification. The Extra Skip Connection and Asymmetric Convolution Block were used for enhancing the network's ability to segment buildings on different scales; Shuffle Attention directed the network's attention to the correlation of buildings before and after the disaster. The xBD dataset was used for training and testing in the study, and the overall performance was evaluated using a balanced F-score (F1). The improved network had an F1 of 0.8741 for localization and F1 of 0.7536 for classification. When compared to other methods, it achieved better overall performance for building damage assessment and was able to generalize to multiple disasters.
Funder
Natural Science Foundation of Heilongjiang Province
Key R&D Program Guidance Projects of Heilongjiang Province
Publisher
Springer Science and Business Media LLC
Reference41 articles.
1. Deniz, D., Arneson, E. E., Liel, A. B., Dashti, S. & Javernick-Will, A. N. Flood loss models for residential buildings, based on the 2013 Colorado floods. Nat. Hazards 85, 977–1003 (2017).
2. Du, Y., Gong, L., Li, Q. & Wu, F. Earthquake-induced building damage assessment on SAR multi-texture feature fusion. In Proceedings of the IGARSS 2020—2020 IEEE International Geoscience and Remote Sensing Symposium. 6608–6610 (2020).
3. Lin, C., Li, Y., Liu, Y., Wang, X. & Geng, S. Building damage assessment from post-hurricane imageries using unsupervised domain adaptation with enhanced feature discrimination. IEEE Trans. Geosci. Remote Sens. 60, 1–10 (2021).
4. Naito, S. et al. Building-damage detection method based on machine learning utilizing aerial photographs of the Kumamoto earthquake. Earthq. Spectra 36, 1166–1187 (2020).
5. Allali, S. A., Abed, M. & Mebarki, A. Post-earthquake assessment of buildings damage using fuzzy logic. Eng. Struct. 166, 117–127 (2018).
Cited by
17 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献