EVALUATING THE INFLUENCE OF SPATIAL RESOLUTION ON LANDSLIDE DETECTION: A CASE STUDY IN THE CARLYON BEACH PENINSULA, WASHINGTON

S. Tan, O. Mora, C. Tran
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Abstract

Abstract. Landslides are geological events in which masses of rock and soil slide down the slope of a mountain or hillside. They are influenced by topography, geology, weather, and human activity, and can cause extensive damage to the environment and infrastructure, as well as delay transportation networks. Therefore, it is imperative to detect early-warning signs of landslide hazards as a means of prevention. Traditional landslide surveillance consists of field mapping, but the process is costly and time consuming. Modern landslide mapping uses Light Detection and Ranging (LiDAR) derived Digital Elevation Models (DEMs) and sophisticated algorithms to analyze surface roughness and extract spatial features and patterns of landslide and landslide-prone areas. This study follows a previous study performed that demonstrated that it is possible to detect unstable terrain using algorithmic mapping techniques. The focus of this study is to show how spatial resolution can influence the accuracy of the classification results. The DEM data was resampled from 6 to 12, 24, 48 and 96 ft spatial resolution. The surface feature extractors employed (local topographic range, local topographic variability, slope, and roughness) are fused and analyzed simultaneously by applying k-means and Gaussian Mixture Model (GMM) clustering methods. When compared with the detailed, independently compiled landslide reference map, our data shows a decrease in performance as spatial resolution decreases. These results suggest that spatial resolution does impact the performance of landslide classification.
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评价空间分辨率对滑坡探测的影响:以华盛顿carlyon海滩半岛为例
摘要山体滑坡是一种地质事件,在这种地质事件中,大量的岩石和土壤从山或山坡的斜坡上滑下来。它们受地形、地质、天气和人类活动的影响,可能对环境和基础设施造成广泛的破坏,并延误交通网络。因此,对滑坡灾害进行预警预警是一种必要的预防手段。传统的滑坡监测方法是野外测绘,成本高、耗时长。现代滑坡制图使用光探测和测距(LiDAR)衍生的数字高程模型(dem)和复杂的算法来分析表面粗糙度,提取滑坡和滑坡易发地区的空间特征和模式。这项研究遵循先前的一项研究,该研究表明,使用算法测绘技术可以检测不稳定地形。本研究的重点是展示空间分辨率如何影响分类结果的准确性。DEM数据从6英尺到12英尺、24英尺、48英尺和96英尺的空间分辨率重新采样。采用k-means和高斯混合模型(GMM)聚类方法对所采用的地表特征提取器(局部地形范围、局部地形变异性、坡度和粗糙度)进行融合和分析。与详细的、独立编制的滑坡参考图相比,我们的数据显示,随着空间分辨率的降低,性能会下降。这些结果表明,空间分辨率确实影响了滑坡分类的性能。
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CiteScore
1.70
自引率
0.00%
发文量
949
审稿时长
16 weeks
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