Multi-Sensor Deep Learning for Glacier Mapping
Codru\c{t}-Andrei Diaconu, Konrad Heidler, Jonathan L. Bamber, Harry, Zekollari

TL;DR
This paper reviews how combining multi-sensor remote sensing data with deep learning enhances glacier mapping accuracy and change detection, especially for complex cases like debris-covered and calving glaciers.
Contribution
It provides a comprehensive overview of deep learning applications in multi-sensor glacier mapping, highlighting benefits, challenges, and specific use cases.
Findings
Deep learning improves glacier delineation accuracy.
Multi-sensor data integration aids in complex glacier detection.
Challenges include seasonal snow cover and debris coverage.
Abstract
The more than 200,000 glaciers outside the ice sheets play a crucial role in our society by influencing sea-level rise, water resource management, natural hazards, biodiversity, and tourism. However, only a fraction of these glaciers benefit from consistent and detailed in-situ observations that allow for assessing their status and changes over time. This limitation can, in part, be overcome by relying on satellite-based Earth Observation techniques. Satellite-based glacier mapping applications have historically mainly relied on manual and semi-automatic detection methods, while recently, a fast and notable transition to deep learning techniques has started. This chapter reviews how combining multi-sensor remote sensing data and deep learning allows us to better delineate (i.e. map) glaciers and detect their temporal changes. We explain how relying on deep learning multi-sensor…
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Taxonomy
TopicsCryospheric studies and observations · Winter Sports Injuries and Performance · Climate change and permafrost
