A fully automatic framework for sub-pixel mapping of thermokarst lakes using Sentinel-2 images

IF 5.7 Q1 ENVIRONMENTAL SCIENCES Science of Remote Sensing Pub Date : 2023-11-20 DOI:10.1016/j.srs.2023.100111
Yuanyuan Qin , Chengyuan Zhang , Ping Lu
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Abstract

Mapping and monitoring thermokarst lakes are crucial to understanding the impact of climate change on permafrost regions and quantifying permafrost-related carbon emissions. Several automatic methods based on remote sensing images have been developed for thermokarst lake mapping. However, mixed pixels containing both land and water characteristics in the lakeshore zones pose a significant challenge to the accuracy of these methods. Furthermore, few approaches were able to fully automate the identification of thermokarst lakes without the manual training sample selection or parameter tuning. In this study, we present a fully automatic framework for thermokarst lake mapping using moderate-resolution Sentinel-2 images. The proposed method combines multidimensional hierarchical clustering and sub-pixel mapping (SPM) based on the radial basis function (RBF) interpolation and Markov random field (MRF) (referred to as RBF-then-MRF SPM), so as to achieve thermokarst lake mapping at a spatial resolution of 3.3 m. We apply the proposed method to two representative thermokarst lake distribution regions in the Northern Hemisphere and achieve a mean Kappa coefficient of 0.89 and 0.99, and a mean Quality of 89.86% and 96.60% on the central Tibetan Plateau and the northern Seward Peninsula, respectively. The results demonstrate that the proposed method significantly improves the accuracy of mixed pixel extraction, and the automatic thermokarst lake mapping is applicable to diverse permafrost regions.

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基于Sentinel-2图像的热岩溶湖亚像素自动制图框架
绘制和监测热岩溶湖对于了解气候变化对永久冻土区的影响以及量化与永久冻土区相关的碳排放至关重要。基于遥感影像的热岩溶湖泊自动成图方法已经发展起来。然而,在湖岸地区,混合像元包含陆地和水的特征,这对这些方法的准确性提出了重大挑战。此外,很少有方法能够在没有人工训练样本选择或参数调整的情况下完全自动化热岩溶湖的识别。在这项研究中,我们提出了一个使用中分辨率Sentinel-2图像进行热岩溶湖制图的全自动框架。该方法将基于径向基函数(RBF)插值和马尔可夫随机场(MRF)的多维层次聚类与亚像素映射(SPM)相结合(简称RBF- MRF SPM),实现了3.3 m空间分辨率的热岩溶湖泊映射。将该方法应用于北半球两个具有代表性的热岩溶湖泊分布区,青藏高原中部和苏厄德半岛北部的Kappa系数均值分别为0.89和0.99,质量均值分别为89.86%和96.60%。结果表明,该方法显著提高了混合像元提取的精度,热岩溶湖自动成图适用于不同的多年冻土区。
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