Identifying thermokarst lakes using deep learning and high-resolution satellite images

IF 5.7 Q1 ENVIRONMENTAL SCIENCES Science of Remote Sensing Pub Date : 2024-11-02 DOI:10.1016/j.srs.2024.100175
Kuo Zhang , Min Feng , Yijie Sui , Jinhao Xu , Dezhao Yan , Zhimin Hu , Fei Han , Earina Sthapit
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Abstract

Thermokarst lakes play a critical role in hydrologic connectivity, permafrost stability, and carbon exchange from local to regional scales. Due to the typically small sizes and highly dynamic nature of thermokarst lakes, their identification in large regions remains challenging. This study presented a deep-learning model and applied it to high-resolution (1.2 m) satellite imagery to automatically delineate and inventory thermokarst lakes. The method was applied in the Yellow River source region in eastern Tibetan Plateau and identified 52,486 thermokarst lakes, with the majority (90.9%) smaller than 0.01 km2. It's the most comprehensive survey of thermokarst lakes within the region and more than 45% of these lakes were not covered by any existing lake datasets, thereby leading to a possible underestimation of the amount and effects of thermokarst lakes. Validation with visually interpreted data reported MIoU of 0.97, F1 score of 0.96, and PA of 0.97, confirming that thermokarst lakes we detected were matched very well with the reference. The experiment demonstrated great potential for investigating the distribution and impacts of thermokarst lakes in borad regions, such as the entire Tibetan Plateau or even the globe, to provide critical knowledge for their response to climate change and effects from their dynamics.
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利用深度学习和高分辨率卫星图像识别热卡湖
热卡湖在水文连通性、永久冻土稳定性以及从地方到区域尺度的碳交换方面发挥着至关重要的作用。由于热卡湖通常面积较小,且具有高度动态性,因此在大面积区域内识别热卡湖仍具有挑战性。本研究提出了一种深度学习模型,并将其应用于高分辨率(1.2 米)卫星图像,以自动划分和清查热卡湖。该方法应用于青藏高原东部的黄河源区,共识别出 52486 个热卡湖,其中大多数(90.9%)小于 0.01 平方公里。这是该地区最全面的热卡湖调查,其中超过 45% 的湖泊未被任何现有湖泊数据集覆盖,因此可能导致低估了热卡湖的数量和影响。通过目视解释数据进行验证,结果显示 MIoU 为 0.97,F1 得分为 0.96,PA 为 0.97,这证实了我们检测到的热卡湖与参照物非常匹配。该实验表明,研究热卡湖在整个青藏高原甚至全球等波状区域的分布及其影响具有巨大潜力,可为研究热卡湖对气候变化的响应及其动态影响提供重要知识。
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