Landslide detection in the Himalayas using machine learning algorithms and U-Net

被引:0
作者
Sansar Raj Meena
Lucas Pedrosa Soares
Carlos H. Grohmann
Cees van Westen
Kushanav Bhuyan
Ramesh P. Singh
Mario Floris
Filippo Catani
机构
[1] University of Twente,Faculty of Geo
[2] University of Padova,Information Science and Earth Observation (ITC)
[3] University of São Paulo (IGc-USP),Machine Intelligence and Slope Stability Laboratory, Department of Geosciences
[4] University of São Paulo (IEE-USP),Institute of Geosciences
[5] Spatial Analysis and Modelling Lab (SPAMLab) -,Institute of Energy and Environment
[6] Schmid College of Science and Technology,School of Life and Environmental Sciences
[7] Chapman University One University Drive,undefined
来源
Landslides | 2022年 / 19卷
关键词
Landslides; U-Net; Deep learning; Machine learning; Himalayas;
D O I
暂无
中图分类号
学科分类号
摘要
Event-based landslide inventories are essential sources to broaden our understanding of the causal relationship between triggering events and the occurring landslides. Moreover, detailed inventories are crucial for the succeeding phases of landslide risk studies like susceptibility and hazard assessment. The openly available inventories differ in the quality and completeness levels. Event-based landslide inventories are created based on manual interpretation, and there can be significant differences in the mapping preferences among interpreters. To address this issue, we used two different datasets to analyze the potential of U-Net and machine learning approaches for automated landslide detection in the Himalayas. Dataset-1 is composed of five optical bands from the RapidEye satellite imagery. Dataset-2 is composed of the RapidEye optical data, and ALOS-PALSAR derived topographical data. We used a small dataset consisting of 239 samples acquired from several training zones and one testing zone to evaluate our models’ performance using the fully convolutional U-Net model, Support Vector Machines (SVM), K-Nearest Neighbor, and the Random Forest (RF). We created thirty-two different maps to evaluate and understand the implications of different sample patch sizes and their effect on the accuracy of landslide detection in the study area. The results were then compared against the manually interpreted inventory compiled using fieldwork and visual interpretation of the RapidEye satellite image. We used accuracy assessment metrics such as F1-score, Precision, Recall, and Mathews Correlation Coefficient (MCC). In the context of the Nepali Himalayas, employing RapidEye images and machine learning models, a viable patch size was investigated. The U-Net model trained with 128 × 128 pixel patch size yields the best MCC results (76.59%) with the dataset-1. The added information from the digital elevation model benefited the overall detection of landslides. However, it does not improve the model’s overall accuracy but helps differentiate human settlement areas and river sand bars. In this study, the U-Net achieved slightly better results than other machine learning approaches. Although it can depend on architecture of the U-Net model and the complexity of the geographical features in the imagery, the U-Net model is still preliminary in the domain of landslide detection. There is very little literature available related to the use of U-Net for landslide detection. This study is one of the first efforts of using U-Net for landslide detection in the Himalayas. Nevertheless, U-Net has the potential to improve further automated landslide detection in the future for varied topographical and geomorphological scenes.
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页码:1209 / 1229
页数:20
相关论文
共 86 条
  • [1] Bacha AS(2020)Transferability of object-based image analysis approaches for landslide detection in the Himalaya Mountains of northern Pakistan Int J Remote Sens 41 3390-3410
  • [2] Van der Werff H(2020)Recognition of the landslide disasters with extreme learning machine Int J Comput Sci Eng 21 84-94
  • [3] Shafique M(2014)Forested landslide detection using LiDAR data and the random forest algorithm: a case study of the Three Gorges China Remote Sensing of Environment 152 291-301
  • [4] Khan H(1995)Representative rainfall thresholds for landslides in the Nepal Himalaya Support-Vector Networks Machine Learning 20 273-297
  • [5] Chen GY(2008)Global fatal landslide occurrence from 2004 to 2018 Geomorphology 100 429-443
  • [6] Li X(2016)Landslide mapping using two main deep-learning convolution neural network streams combined by the Dempster-Shafer model Nat Hazard 18 2161-2181
  • [7] Gong WY(2016)Landslide detection from an open satellite imagery and digital elevation model dataset using attention boosted convolutional neural networks Landslides in a Changing Climate Earth-Science Reviews 162 227-252
  • [8] Xu H(2021)Object-oriented method combined with deep convolutional neural networks for land-use-type classification of remote sensing images IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing 14 452-463
  • [9] Chen W(2019)Landslide inventory mapping from bitemporal images using deep convolutional neural networks UAV-Based Slope Failure Detection Using Deep-Learning Convolutional Neural Networks Remote Sensing 11 2046-66
  • [10] Li X(2012)Comparison of earthquake-triggered landslide inventories: a case study of the 2015 Gorkha earthquake Landslide Inventory Maps: New Tools for an Old Problem Earth-Science Reviews 112 42-1336