Please use this identifier to cite or link to this item: http://hdl.handle.net/2080/3970
Title: Attention Aware U-Net Architecture for Semantic Segmentation and Detection of Ocean Eddy’s
Authors: Saida, Shaik John
Ari, Samit
Keywords: Automatic eddy detection
deep learning
dilated U-Net
new attention module
Issue Date: Feb-2023
Citation: 3rd IEEE International Conference On Range Technology(ICORT 2023), Chandipur, India, 23 To 25 February 2023
Abstract: An eddy is a circular movement of ocean water that carries several ocean elements across the ocean. The study of marine biological environments and climate change benefits from the identification of ocean eddies. Eddy detection is one of the most active fields in physical oceanography research. Despite recent advancements, deep convolution neural networks for eddy detection are still in their infancy. The wide range of eddies’ sizes and shapes makes automatic eddy segmentation challenging. Through the creation of a dense forecast, UNet solves this problem. The network architecture, however, is immensely intricate. In this study, a dilated convolution U-Net is proposed for the semantic segmentation of ocean eddies. This method reduces architectural complexity without compromising performance. Further, a new attention approach is proposed to enhance the decoder features before cascading with the encoded feature map. The experimental results demonstrate that the proposed architecture outperforms the state-of-the art techniques for eddy detection
Description: Copyright belongs to proceeding publisher
URI: http://hdl.handle.net/2080/3970
Appears in Collections:Conference Papers

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