Rapid estimation of minimum depth-to-bedrock from lidar leveraging deep-learning-derived surficial material maps

IF 2.6 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
William Odom, Daniel Doctor
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引用次数: 1

Abstract

Previously glaciated landscapes often share similar surficial characteristics, including large areas of exposed bedrock, blankets of till deposits, and alluvium-floored valleys. These materials play significant roles in geologic and hydrologic resources, geohazards, and landscape evolution; however, the vast extents of many previously glaciated landscapes have rendered comprehensive, detailed field mapping difficult. While recent advances in remote sensing have facilitated mapping of surficial materials and landforms, manual map creation has remained a time-intensive task.

The development of convolutional neural networks (CNNs) for image classification has provided a new opportunity for rapid characterization of digital elevation models, thus enabling efficient mapping of surficial materials and landforms. We have developed a methodology that leverages existing geologic maps and high-resolution (1–3 m) lidar data to train a U-Net CNN to classify alluvium and exposed bedrock in previously glaciated regions. Coupled with U.S. Geological Survey-developed geomorphometry tools capable of approximating stream incision depths, these classifications can be used to estimate the minimum thicknesses of stream-proximal hillslope sediments in areas where streams have undergone minimal incision into bedrock.

We validate this approach in the context of the Neversink River watershed, a subbasin of the Delaware River Basin and significant water source for New York City. Evaluation of deep learning model performance demonstrates substantial agreement with manually drawn maps of alluvium and exposed bedrock. Validation of the minimum sediment thickness map using borehole data and passive seismic measurements shows the greatest performance for shallow materials and decreased performance in deep sediments, as well as in areas where bedrock exposures were too small to be resolved by lidar. To resolve these issues and create more accurate surficial maps, we are training new CNNs with additional geologic data and exploring advanced approaches for estimating depths of stream incision.

利用深度学习衍生的地表物质图,快速估计激光雷达到基岩的最小深度
以前的冰川景观通常具有相似的表面特征,包括大面积的裸露基岩,覆盖的土壤沉积物和冲积层覆盖的山谷。这些物质在地质水文资源、地质灾害和景观演变中具有重要作用;然而,由于许多以前冰川覆盖的景观面积很大,因此很难进行全面、详细的实地测绘。虽然遥感的最新进展促进了地表物质和地形的测绘,但手工绘制地图仍然是一项耗时的任务。卷积神经网络(cnn)用于图像分类的发展为快速表征数字高程模型提供了新的机会,从而实现了地表物质和地形的有效映射。我们开发了一种方法,利用现有的地质图和高分辨率(1-3米)激光雷达数据来训练U-Net CNN,对以前冰川地区的冲积层和暴露的基岩进行分类。再加上美国地质调查局开发的能够近似河流切口深度的地貌学工具,这些分类可以用来估计在河流对基岩进行最小切口的地区,河流近坡沉积物的最小厚度。我们在Neversink河流域的背景下验证了这种方法,该流域是特拉华河流域的一个子流域,也是纽约市的重要水源。对深度学习模型性能的评估表明,该模型与人工绘制的冲积层和裸露基岩地图有很大的一致性。利用钻孔数据和被动地震测量验证的最小沉积物厚度图显示,浅层材料的性能最好,而深层沉积物的性能较差,以及基岩暴露过小而无法通过激光雷达分辨的区域。为了解决这些问题并创建更精确的地表地图,我们正在用额外的地质数据训练新的cnn,并探索估算河流切口深度的先进方法。
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
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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