自动去除平原地区机载激光雷达 DTM 中人工地形的简单方法

IF 3.1 2区 地球科学 Q2 GEOGRAPHY, PHYSICAL Geomorphology Pub Date : 2024-08-22 DOI:10.1016/j.geomorph.2024.109388
Kazuki Yoshida , Mamoru Koarai
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引用次数: 0

摘要

冲积平原极易遭受洪水和地面灾害。最近的快速城市化和气候变化加剧了城市地区的灾害风险。地貌图是估算灾害风险的关键,它根据斜坡凹断和微地貌的模式划定地貌边界。然而,要提高此类地图的准确性,需要能够更精确地捕捉这些特征的数据提取方法。机载光探测与测距(LiDAR)数字地形模型(DTMs)中的相邻高程点得出的传统地形测量结果,由于包含了大量类似噪声的人工地形特征,无法准确表示低地表的坡度变化。因此,分析自然地形变得非常具有挑战性。为了解决这个问题,我们的研究设计了一种方法来自动识别和消除 LiDAR DTM 中的噪声类人工地形。为此,我们从土地利用矢量数据中剔除了主要的人工地形特征,创建了边缘保留的平滑 DTM,并选择性地只剔除平滑 DTM 与 LiDAR DTM 之间差异较大的区域并进行插值。这种方法最大限度地减少了人工地形的插值,并对其他区域引用了激光雷达 DTM,从而最大限度地减少了数据质量损失。在纵向坡度约为 1%或更小的平原地区,可以高分辨率识别和划分地形边界,用于研究平原地区洪水和地面特征与地貌体积之间的关系。这种方法只需使用 QGIS 和免费开放数据即可轻松处理。这种方法提高了灾害风险估算的精度,有助于在脆弱地区进行更有效的城市规划。
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A simple method to automatically remove artificial terrain from airborne LiDAR DTMs in plain areas

Alluvial plains are highly vulnerable to floods and ground disasters. Recent rapid urbanization and climate change have heightened disaster risks in urban areas. Geomorphological maps, crucial for estimating disaster risks, delineate landform boundaries based on patterns of concave breaks of slope and micro-landforms. However, enhancing the accuracy of such maps requires data extraction methods capable of capturing these features with greater precision. Traditional topographic measurements derived from adjacent elevation points in airborne light detection and ranging (LiDAR) digital terrain models (DTMs) fail to accurately represent slope variations on low ground surfaces due to the inclusion of numerous noise-like artificial terrain features. Consequently, analyzing natural terrain becomes challenging. To address this issue, our study devised a method to automatically identify and eliminate noise-like artificial terrain from LiDAR DTMs. We achieved this by removing major artificial terrain features from land-use vector data, creating an edge-preserving smooth DTM, and selectively removing and interpolating only those areas where were large differences between the smooth DTM and the LiDAR DTM. This method minimizes the interpolation of artificial terrain and quotes the LiDAR DTM for other areas, thereby minimizing the data quality loss. It is possible to identify and demarcate topographic boundaries in plains with a longitudinal gradient of approximately 1% or less at a high resolution, which can be used to investigate the relationship between flood and ground characteristics and landform volume in the plains. This method can be easily processed using only QGIS and free open data. This approach enhances the precision of disaster risk estimation and facilitates more effective urban planning in vulnerable areas.

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来源期刊
Geomorphology
Geomorphology 地学-地球科学综合
CiteScore
8.00
自引率
10.30%
发文量
309
审稿时长
3.4 months
期刊介绍: Our journal''s scope includes geomorphic themes of: tectonics and regional structure; glacial processes and landforms; fluvial sequences, Quaternary environmental change and dating; fluvial processes and landforms; mass movement, slopes and periglacial processes; hillslopes and soil erosion; weathering, karst and soils; aeolian processes and landforms, coastal dunes and arid environments; coastal and marine processes, estuaries and lakes; modelling, theoretical and quantitative geomorphology; DEM, GIS and remote sensing methods and applications; hazards, applied and planetary geomorphology; and volcanics.
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