Abstract:
En
|
Text:
En
|
PDF:
En
ABSTRACT Accurate crop classification, crucial for a macro-level understanding of food production, formulating relevant agricultural policies, and predicting comprehensive agricultural productivity, enables precise crop distribution. In remote sensing image classification, feature selection and representation play a pivotal role in accuracy. An augmented U-Net algorithm, named ASPP-SAM-UNet, integrating spatial attention mechanisms and multi-scale features is proposed for the enhancement of typical crop classification accuracy in remote sensing. The ASPP-SAM-UNet design integrates features over multiple scales, boosts the representational capacity of shallow features, and expands the neural network’s receptive field by incorporating Atrous Spatial Pyramid Pooling (ASPP) into the convolutional components of the standard U-Net encoder via residual connections. The integration of the residual module allows for a profound fusion of deep and shallow features, thereby enhancing their utility. The spatial attention mechanism amalgamates spatial and semantic information, empowering the decoder to reclaim more spatial information. This study focused on Bayan County, Harbin City, Heilongjiang Province, China, employing GF-6 WFV remote sensing images for crop classification. Empirical outcomes showed a significant improvement in classification accuracy with the advanced algorithm, boosting the overall accuracy (OA) from 89.49 to 92.80%. Specifically, the segmentation accuracy for maize, rice, and soybean increased from 89.90, 89.96, and 87.37% to 93.47, 94.82, and 89.35%, respectively. The suggested algorithm offers a pioneering performance standard for crop classification leveraging GF-6 WFV remote sensing imagery. macrolevel macro level production policies productivity distribution UNet U Net ASPPSAMUNet, ASPPSAMUNet ASPP SAM UNet, multiscale multi scale scales networks network s (ASPP connections utility information County City Province China GF6 GF 6 GF- OA (OA 8949 89 49 89.4 9280 92 80 92.80% Specifically maize rice 8990 90 89.90 8996 96 89.96 8737 87 37 87.37 9347 93 47 93.47 9482 94 82 94.82 8935 35 89.35% respectively imagery 894 8 4 89. 928 9 92.80 899 89.9 873 3 87.3 934 93.4 948 94.8 893 89.35 92.8 87. 93. 94. 89.3 92.