AutoTerm: an automated pipeline for glacier terminus extraction using machine learning and a “big data” repository of Greenland glacier termini

IF 4.4 2区 地球科学 Q1 GEOGRAPHY, PHYSICAL
Cryosphere Pub Date : 2023-08-24 DOI:10.5194/tc-17-3485-2023
E. Zhang, G. Catania, D. Trugman
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引用次数: 1

Abstract

Abstract. Ice sheet marine margins via outlet glaciers are susceptible to climate change and are expected to respond through retreat, steepening, and acceleration, although with significant spatial heterogeneity. However, research on ice–ocean interactions has continued to rely on decentralized, manual mapping of features at the ice–ocean interface, impeding progress in understanding the response of glaciers and ice sheets to climate change. The proliferation of remote-sensing images lays the foundation for a better understanding of ice–ocean interactions and also necessitates the automation of terminus delineation. While deep learning (DL) techniques have already been applied to automate the terminus delineation, none involve sufficient quality control and automation to enable DL applications to “big data” problems in glaciology. Here, we build on established methods to create a fully automated pipeline for terminus delineation that makes several advances over prior studies. First, we leverage existing manually picked terminus traces (16 440) as training data to significantly improve the generalization of the DL algorithm. Second, we employ a rigorous automated screening module to enhance the data product quality. Third, we perform a thoroughly automated uncertainty quantification on the resulting data. Finally, we automate several steps in the pipeline allowing data to be regularly delivered to public databases with increased frequency. The automation level of our method ensures the sustainability of terminus data production. Altogether, these improvements produce the most complete and high-quality record of terminus data that exists for the Greenland Ice Sheet (GrIS). Our pipeline has successfully picked 278 239 termini for 295 glaciers in Greenland from Landsat 5, 7, 8 and Sentinel-1 and Sentinel-2 images, spanning the period from 1984 to 2021. The pipeline has been tested on glaciers in Greenland with an error of 79 m. The high sampling frequency and the controlled quality of our terminus data will enable better quantification of ice sheet change and model-based parameterizations of ice–ocean interactions.
AutoTerm:使用机器学习提取冰川终点的自动化管道和格陵兰冰川终点的“大数据”存储库
摘要通过出口冰川的冰原海洋边缘易受气候变化的影响,预计将以退缩、变陡和加速的方式作出响应,尽管存在显著的空间异质性。然而,对冰海相互作用的研究仍然依赖于分散的、人工绘制冰海界面特征的方法,阻碍了理解冰川和冰盖对气候变化响应的进展。遥感影像的大量增加为更好地了解冰-海相互作用奠定了基础,也要求终端划定的自动化。虽然深度学习(DL)技术已经被应用于自动化终端描绘,但没有一个涉及到足够的质量控制和自动化,以使深度学习应用程序能够解决冰川学中的“大数据”问题。在这里,我们建立在既定的方法来创建一个完全自动化的管道末端划定,使几个进展比以前的研究。首先,我们利用现有的人工选择的末端轨迹(16440)作为训练数据,以显着提高DL算法的泛化性。其次,我们采用严格的自动化筛选模块,提高数据产品质量。第三,我们对结果数据执行完全自动化的不确定性量化。最后,我们自动化了管道中的几个步骤,允许数据以更高的频率定期交付到公共数据库。我们方法的自动化水平确保了终端数据生产的可持续性。总的来说,这些改进产生了格陵兰冰盖(GrIS)存在的最完整和高质量的终端数据记录。从1984年到2021年,我们的管道从Landsat 5、7、8和Sentinel-1和Sentinel-2图像中成功地为格陵兰的295个冰川挑选了278 239个终点站。该管道已在格陵兰岛的冰川上进行了测试,误差为79米。我们的终端数据的高采样频率和受控质量将使冰盖变化和基于模型的冰-海洋相互作用的参数化更好地量化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Cryosphere
Cryosphere GEOGRAPHY, PHYSICAL-GEOSCIENCES, MULTIDISCIPLINARY
CiteScore
8.70
自引率
17.30%
发文量
240
审稿时长
4-8 weeks
期刊介绍: The Cryosphere (TC) is a not-for-profit international scientific journal dedicated to the publication and discussion of research articles, short communications, and review papers on all aspects of frozen water and ground on Earth and on other planetary bodies. The main subject areas are the following: ice sheets and glaciers; planetary ice bodies; permafrost and seasonally frozen ground; seasonal snow cover; sea ice; river and lake ice; remote sensing, numerical modelling, in situ and laboratory studies of the above and including studies of the interaction of the cryosphere with the rest of the climate system.
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