冰期
冰川湖
高原(数学)
地质学
自然地理学
冰川
融水
冰川地貌
遥感
地貌学
冰碛
地理
数学分析
数学
作者
Jiao Hu,Tingbin Zhang,Xiaobing Zhou,Guihua Yi,Xiaojuan Bie,Jingji Li,Yang Chen,Pingqing Lai
标识
DOI:10.1109/tgrs.2023.3349281
摘要
Mapping glacial lakes is a prerequisite for understanding their responses to climate changes and assessing potential danger of glacial lake outburst floods. Although remote sensing technology has enabled continuous monitoring and assessment of global glacial lake evolution, accurately and reliably extracting glacial lakes in high mountain areas remains challenging. This study proposed a glacial lake mapping framework based on multi-source remote sensing technique and an improved deep learning model to address diverse challenges associated with glacial lake mapping in high mountain areas. Test results obtained in the Southeast Tibetan Plateau region demonstrate that the framework achieves high accuracy, with measures of Dice, Precision, Recall, and Intersection Over Union reaching 0.899, 0.901, 0.896, and 0.829, respectively. It effectively mitigates impacts of cloud cover, shadowing, glacial debris, lake-water turbidity, and freeze-thaw lake water conditions on glacial lake delineation. This study provided a concrete solution for glacial lake mapping in high mountain areas with complex topography, and it supported technical advancements in glacial lake outburst flood risk identification.
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