Abstract
Detection of forest changes is an important part of the restoration of forest land resources. Timely detection of forest changes is helpful for standardized management of government departments. However, due to the interference of seasonal factors, there are a large number of pseudo changes in the forest change detection results. Current methods of change detection focus on extracting more accurate boundaries of change. In order to suppress pseudo changes in the results of forest change detection, we constructed a model Forest-CD based on the encoder-decoder structure with the help of background information. The Forest-CD encoder uses the Swin Transformer as a backbone for extracting the change features and effectively simulating global information. The decoder uses the Feature Pyramid Network to recover feature scale and fuse information at multiple scales. Experiments on a large forest change dataset show that Forest-CD has a higher F1-Score (0.614) compared to other change detection models. The visualization results show that Forest-CD can well suppress pseudo changes caused by seasonal factors in forestry scenes and can more accurately capture the boundaries of change.
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