4.7 Article

Fast Seismic Landslide Detection Based on Improved Mask R-CNN

期刊

REMOTE SENSING
卷 14, 期 16, 页码 -

出版社

MDPI
DOI: 10.3390/rs14163928

关键词

mask R-CNN; Swin Transformer; landslide detection; UAV image; transfer learning

资金

  1. National Key Research and Development Program of China [2021YFC3000401]
  2. Chengdu Technology Innovation RD Project [2022-YF05-01090-SN]
  3. State Key Laboratory of Geohazard Prevention and Geoenvironment Protection Independent Research Project [SKLGP2018Z010]
  4. National Natural Science Foundation of China (NSFC) [41871303]
  5. Sichuan Provincial Science and Technology Support Project [2021YFG0365]
  6. Department of Natural Resources of Sichuan Province [kj-2021-3]

向作者/读者索取更多资源

The purpose of this study is to quickly determine the extent and size of post-earthquake seismic landslides using a small amount of post-earthquake seismic landslide imagery data. Different backbone networks were used for training and identification, and the performance of the improved model was significantly better in terms of accuracy and recognition in Haiti's post-earthquake images.
For emergency rescue and damage assessment after an earthquake, quick detection of seismic landslides in the affected areas is crucial. The purpose of this study is to quickly determine the extent and size of post-earthquake seismic landslides using a small amount of post-earthquake seismic landslide imagery data. This information will serve as a foundation for emergency rescue efforts, disaster estimation, and other actions. In this study, Wenchuan County, Sichuan Province, China's 2008 post-quake Unmanned Air Vehicle (UAV) remote sensing images are used as the data source. ResNet-50, ResNet-101, and Swin Transformer are used as the backbone networks of Mask R-CNN to train and identify seismic landslides in post-quake UAV images. The training samples are then augmented by data augmentation methods, and transfer learning methods are used to reduce the training time required and enhance the generalization of the model. Finally, transfer learning was used to apply the model to seismic landslide imagery from Haiti after the earthquake that was not calibrated. With Precision and F1 scores of 0.9328 and 0.9025, respectively, the results demonstrate that Swin Transformer performs better as a backbone network than the original Mask R-CNN, YOLOv5, and Faster R-CNN. In Haiti's post-earthquake images, the improved model performs significantly better than the original model in terms of accuracy and recognition. The model for identifying post-earthquake seismic landslides developed in this paper has good generalizability and transferability as well as good application potential in emergency responses to earthquake disasters, which can offer strong support for post-earthquake emergency rescue and disaster assessment.

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