中尺度气象学
海面温度
变压器
温度测量
地质学
遥感
气候学
工程类
电气工程
物理
量子力学
电压
作者
Chen Ji,Wenyang Xu,Xiangtian Zheng,Yasmeen Ahmed,Saad Ahmed Jamal,Fakhar Imam,Mohammed Saleh Ali Muthanna,Maha Ibrahim Muthanna,Sajid Ullah,Dmitry E. Kucher
标识
DOI:10.1109/jstars.2025.3574004
摘要
Mesoscale eddies are dynamic oceanic phenomena significantly influencing marine ecosystems’ energy transfer, nutrients, and biogeochemical cycles. These eddies’ precise identification and categorization can improve climate modeling, ocean circulation research, and environmental surveillance. This study presents an innovative methodology for mesoscale eddy detection utilizing Transformer-based deep learning models, namely, Swin Transformer U-Net and SegFormer, to categorize ocean eddies from sea surface temperature (SST) maps sourced from the copernicus marine environment monitoring service. In contrast to traditional convolutional neural networks (CNNs) that have prevailed in the domain, Transformer-based models provide superior global attention mechanisms, facilitating greater feature extraction and segmentation precision. The models are trained on labeled SST datasets and assessed using intersection over union, Dice coefficient, precision, recall, and F1-score. Experimental findings demonstrate that Transformer-based designs surpass conventional CNN-based techniques, yielding enhanced generalization and superior accuracy in classifying cyclonic and anticyclonic eddies. This study illustrates the efficacy of attention-based segmentation algorithms for resilient oceanographic applications.
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