With the rapid socioeconomic development in China, increasing soil erosion caused by anthropogenic production and construction activities is taking place, which is characterized by short duration, high frequency, and great… Click to show full abstract
With the rapid socioeconomic development in China, increasing soil erosion caused by anthropogenic production and construction activities is taking place, which is characterized by short duration, high frequency, and great damage to its surrounding environment. Therefore, the regulation and control of soil erosion of anthropogenically disturbed parcels is an urgent task. This study proposes an improved model that combines the boundary constraint and jagged hybrid dilated convolution channel shuffling module (BCJHDC and the polarized self-attention (PSA) module for extracting anthropogenically disturbed parcels with soil erosion from high-resolution remote sensing images in Hubei Province. First, the PSA module is added to the encoder to better extract the feature information of the target object. Second, the BCJHDC module is used to extract multiscale semantic information from images and improve the boundary segmentation quality. Precision, recall, intersection over union (IOU), and F1 score (F1) are calculated to evaluate the model accuracy. The results indicate that our improved model performs well on the human-perturbed parcel extraction task, with an F1 of 87.92% and an IOU of 78.44%. Ablation experiments and application experiments suggest the validity of the applicability and the portability of our proposed improved model, respectively. Compared with the other seven advanced semantic segmentation models, our improved model has significant advantages. Overall, this study provides a valuable reference for policy formulation of water and soil conservation.
               
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