2023
DOI: 10.1109/jstars.2022.3230081
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Coastal Aquaculture Area Extraction Based on Self-Attention Mechanism and Auxiliary Loss

Abstract: With the development of deep learning in satellite remote sensing image segmentation, convolutional neural networks have achieved better results than traditional methods. In some full convolutional networks, the number of network layers usually increases to obtain deep features, but the gradient disappearance problem occurs when the number of network layers deepens. Many scholars have obtained multiscale features by using different convolutional calculations. We want to obtain multiscale features in the networ… Show more

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Cited by 8 publications
(1 citation statement)
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“…We compare the proposed RADNet with seven other semantic segmentation networks, including U-Net [39], DeepLabv3+ [40], HRNet [41], DS-HCN [3], RaftNet [42], Improved U-Net [8], D-ResUnet [43], FRCNet [44], and SAMALNet [45]. Among them, the latter six methods were proposed for aquaculture area segmentation.…”
Section: E Comparison With the Other Modelsmentioning
confidence: 99%
“…We compare the proposed RADNet with seven other semantic segmentation networks, including U-Net [39], DeepLabv3+ [40], HRNet [41], DS-HCN [3], RaftNet [42], Improved U-Net [8], D-ResUnet [43], FRCNet [44], and SAMALNet [45]. Among them, the latter six methods were proposed for aquaculture area segmentation.…”
Section: E Comparison With the Other Modelsmentioning
confidence: 99%