Machine learning – An approach for consistent rock glacier mapping and inventorying – Example of Austria

IF 2.6 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Georg H. Erharter , Thomas Wagner , Gerfried Winkler , Thomas Marcher
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引用次数: 2

Abstract

Rock glaciers (RG) are landforms that occur in high latitudes or elevations and — in their active state — consist of a mixture of rock debris and ice. Despite serving as a form of groundwater storage, they are an indicator for the occurrence of (former) permafrost and therefore carry significance in the research for the ongoing climate change. For these reasons, the past years have shown rising interest in the establishment of RG inventories to investigate the extent of permafrost and quantify water storages. Creating these inventories, however, usually involves manual, laborious, and subjective mapping of the landforms based on aerial image - and digital elevation model analysis. We propose an approach for RG mapping based on supervised machine learning which can help to increase the mapping efficiency and permits rapid RG mapping in vast and not yet covered areas. We found deep convolutional artificial neural networks (ANN) that are specifically designed for image segmentation (U-Net architecture) to be well suited for this classification problem. The general workflow consists of training the ANNs with orthophotos and slope maps of digital elevation models as input. The output (RG label-maps) is derived from a recently published RG inventory of the Austrian Alps that features 5769 individual RGs and was compiled manually by several scientists. To increase the generalization capabilities, we use live data augmentation during training. Based on this inventory, the ANNs have learned the average expert opinion and the RG map generated by the ANN can be used to increase the consistency and completeness of already existing RG inventories. Moreover, this ANN approach might be valuable for other landform mapping tasks beyond rock glaciers (e.g., other mass movements).

机器学习-一致的岩石冰川测绘和编目方法-奥地利的例子
岩石冰川(RG)是发生在高纬度或高海拔地区的地貌,在其活动状态下,由岩石碎屑和冰的混合物组成。尽管它们是地下水储存的一种形式,但它们是(前)永久冻土发生的一个指标,因此在持续气候变化的研究中具有重要意义。由于这些原因,在过去的几年里,人们越来越有兴趣建立RG清单,以调查永久冻土的范围并量化水的储存。然而,创建这些清单通常涉及基于航空图像和数字高程模型分析的手动、费力和主观的地貌映射。我们提出了一种基于监督机器学习的RG映射方法,该方法有助于提高映射效率,并允许在广阔且尚未覆盖的区域进行快速RG映射。我们发现专门为图像分割(U-Net架构)设计的深度卷积人工神经网络(ANN)非常适合这个分类问题。一般的工作流程包括用正射影像和数字高程模型的坡度图作为输入来训练人工神经网络。输出(RG标签地图)来自最近出版的奥地利阿尔卑斯山RG清单,其中包含5769个单独的RG,由几位科学家手工编制。为了提高泛化能力,我们在训练期间使用实时数据增强。在此清单的基础上,人工神经网络学习了平均专家意见,人工神经网络生成的RG地图可用于增加现有RG清单的一致性和完整性。此外,这种人工神经网络方法可能对岩石冰川以外的其他地形测绘任务很有价值(例如,其他质量运动)。
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来源期刊
Applied Computing and Geosciences
Applied Computing and Geosciences Computer Science-General Computer Science
CiteScore
5.50
自引率
0.00%
发文量
23
审稿时长
5 weeks
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