4.7 Article

Comparing Methods for Segmenting Supra-Glacial Lakes and Surface Features in the Mount Everest Region of the Himalayas Using Chinese GaoFen-3 SAR Images

Journal

REMOTE SENSING
Volume 13, Issue 13, Pages -

Publisher

MDPI
DOI: 10.3390/rs13132429

Keywords

GF-3; supra-glacial lakes; supra-glacial streams; ice crevasses; segmentation; digital disaster reduction

Funding

  1. Strategic Priority Research Program of the Chinese Academy of Sciences [XDA19030101]
  2. National Natural Science Foundation of China [41871345]

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This study utilized Chinese GF-3 SAR imagery and various machine learning methods to extract glacial lake outlines and other surface features, with the U-Net deep learning model showing the best accuracy and efficiency in supra-glacial lake segmentation. Comprehensive analysis of the spatial characteristics and temporal evolution of glacier features was conducted based on the time series of mapping results, providing a novel approach to enhance the detection accuracy of glacier elements for dynamic monitoring in future research.
Glaciers and numerous glacial lakes that are produced by glacier melting are key indicators of climate change. Often overlooked, supra-glacial lakes develop in the melting area in the low-lying part of a glacier and appear to be highly variable in their size, shape, and location. The lifespan of these lakes is thought to be quite transient, since the lakes may be completely filled by water and burst out within several weeks. Changes in supra-glacial lake outlines and other surface features such as supra-glacial rivers and crevasses on the glaciers are useful indicators for the direct monitoring of glacier changes. Synthetic aperture radar (SAR) is not affected by weather and climate, and is an effective tool for study of glaciated areas. The development of the Chinese GaoFen-3 (GF-3) SAR, which has high spatial and temporal resolution and high-precision observation performance, has made it possible to obtain dynamic information about glaciers in more detail. In this paper, the classical Canny operator, the variational B-spline level-set method, and U-Net-based deep-learning model were applied and compared to extract glacial lake outlines and other surface features using different modes and Chinese GF-3 SAR imagery in the Mount Everest Region of the Himalayas. Particularly, the U-Net-based deep-learning method, which was independent of auxiliary data and had a high degree of automation, was used for the first time in this context. The experimental results showed that the U-Net-based deep-learning model worked best in the segmentation of supra-glacial lakes in terms of accuracy (Precision = 98.45% and Recall = 95.82%) and segmentation efficiency, and was good at detecting small, elongated, and ice-covered supra-glacial lakes. We also found that it was useful for accurately identifying the location of supra-glacial streams and ice crevasses on glaciers, and quantifying their width. Finally, based on the time series of the mapping results, the spatial characteristics and temporal evolution of these features over the glaciers were comprehensively analyzed. Overall, this study presents a novel approach to improve the detection accuracy of glacier elements that could be leveraged for dynamic monitoring in future research.

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