基于多源多分辨率卫星数据的冰川雪线日观测研究

M. Barandun, M. Callegari, U. Strasser, C. Notarnicola
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引用次数: 0

摘要

冰川融水是重要的淡水资源。季节变化可能对下游水资源管理产生影响。目前的冰川监测缺乏一种基于观测的工具,无法在高时间分辨率下对冰川物质平衡进行区域、分季节观测,也无法量化相关的融水释放。冰川上的雪线标志着冰和雪表面之间的过渡,在夏末,它是年度冰川质量平衡的代表。结果表明,与光学卫星传感器上亚季节雪线观测密切相关的冰川质量平衡模式模拟对观测日期具有鲁棒性。遥感的最新进展使有效和广泛的雪线制图成为可能。不同的方法在高到中等分辨率的光学卫星图像上自动区分雪和冰。其他研究则依靠低地面分辨率光学影像在像元水平检索积雪覆盖分数,生成区域积雪覆盖范围图。然而,使用光学传感器的最先进的方法仍然有重要的缺点,例如与云层有关的问题。合成孔径雷达(SAR)获取的图像对云层覆盖几乎不敏感,可用于瞬态雪线的描绘。SAR和光学数据以互补的方式结合在一起,具有独特的潜力,可以在高时空分辨率上更好地监测积雪损耗。这项工作的目的是通过结合Sentinel-1 SAR、Sentinel-2多光谱和低分辨率MODIS图像来绘制冰川积雪图。在此基础上,提出了一种自动处理多源、多分辨率卫星图像叠加分类的方法。这为本世纪初以来的连续雪线制图提供了独特的解决方案。利用所提供的冰川水平近日瞬态积雪分量,为将多源卫星影像分类直接集成到冰川质量平衡监测中提供了新策略基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards daily snowline observations on glaciers using multi-source and multi-resolution satellite data
Glacier melt is an important fresh water source. Seasonal changes can have impacting consequences on downstream water resources management. Today’s glacier monitoring lacks an observation-based tool for regional, sub-seasonal observation of glacier mass balance and a quantification of associated meltwater release at high temporal resolution. The snowline on a glacier marks the transition between the ice and snow surface, and is, at the end of the summer, a proxy for the annual glacier mass balance. It was shown that glacier mass balance model simulations closely tied to sub-seasonal snowline observations on optical satellite sensors are robust for the observation date. Recent advances in remote sensing permit efficient and extensive snowline mapping. Different methods automatically discriminate snow over ice on high- to medium-resolution optical satellite images. Other studies rely on lower ground resolution optical imagery to retrieve snow cover fraction at pixel level and produce regional maps of snow cover extent. However, state-of-the-art methods using optical sensors still have important shortcomings, such as cloud-cover related issues. Images acquired by Synthetic Aperture Radar (SAR), which are almost insensitive to cloud coverage, have proofed suitable for transient snowline delineation. The combination of SAR and optical data in a complementary way carries a unique potential for a better monitoring of snow depletion on high temporal and spatial resolution. The aim of this work is to map snow cover over glaciers by combining Sentinel-1 SAR, Sentinel-2 multispectral and lower resolution MODIS images. Consecutively, we developed an approach that can automatically handle classification of multi-source and multi-resolution satellite image stacks. This provides a unique solution for continuous snowline mapping since the beginning of the century. With the provided close-to-daily transient snow cover fractions on glacier level, we provide the basis for a new strategy to directly integrate multi-source satellite image classification into glacier mass balance monitoring.
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