论文标题

Glaciernet2:高山冰川映射的混合动力多模型学习体系结构

GlacierNet2: A Hybrid Multi-Model Learning Architecture for Alpine Glacier Mapping

论文作者

Xie, Zhiyuan, Haritashya, Umesh K., Asari, Vijayan K., Bishop, Michael P., Kargel, Jeffrey S., Aspiras, Theus H.

论文摘要

近几十年来,气候变化极大地影响了冰川动态,导致质量损失和冰川相关危害的风险增加,包括上冰期和冰期湖上的湖泊发展以及灾难性的爆发洪水。迅速变化的条件决定了对气候 - 冰川动力学的连续和详细观察的需求。有关冰川几何形状的主题和定量信息对于理解气候强迫和冰川对气候变化的敏感性的敏感性至关重要,但是,基于光谱信息和常规机器学习技术的使用,众所周知,准确地绘制碎屑冰川冰川(DCG)是众所周知的。这项研究的目的是改善较早提出的基于深度学习的方法Glaciernet,该方法旨在利用卷积神经网络分割模型来准确地概述区域DCG消融区。具体而言,我们开发了一种增强的冰川架构,使多种模型,自动后处理和盆地级水文流动技术来改善DCG的映射,从而包括消融区和积累区域。实验评估表明,GlacierNet2改善了消融区的估计,并允许与联合(IOU:0.8839)得分高的相交水平。所提出的体系结构在区域尺度上提供了完整的冰川(累积和消融区)概述,总体评分为0.8619。这是自动化完整冰川映射的至关重要的第一步,可用于准确的冰川建模或质量平衡分析。

In recent decades, climate change has significantly affected glacier dynamics, resulting in mass loss and an increased risk of glacier-related hazards including supraglacial and proglacial lake development, as well as catastrophic outburst flooding. Rapidly changing conditions dictate the need for continuous and detailed observations and analysis of climate-glacier dynamics. Thematic and quantitative information regarding glacier geometry is fundamental for understanding climate forcing and the sensitivity of glaciers to climate change, however, accurately mapping debris-cover glaciers (DCGs) is notoriously difficult based upon the use of spectral information and conventional machine-learning techniques. The objective of this research is to improve upon an earlier proposed deep-learning-based approach, GlacierNet, which was developed to exploit a convolutional neural-network segmentation model to accurately outline regional DCG ablation zones. Specifically, we developed an enhanced GlacierNet2 architecture thatincorporates multiple models, automatic post-processing, and basin-level hydrological flow techniques to improve the mapping of DCGs such that it includes both the ablation and accumulation zones. Experimental evaluations demonstrate that GlacierNet2 improves the estimation of the ablation zone and allows a high level of intersection over union (IOU: 0.8839) score. The proposed architecture provides complete glacier (both accumulation and ablation zone) outlines at regional scales, with an overall IOU score of 0.8619. This is a crucial first step in automating complete glacier mapping that can be used for accurate glacier modeling or mass-balance analysis.

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