Abstract

Beyond the direct hazards of earthquakes, the deposited mass of earthquake-induced landslide (EQIL) in the riverbeds causes the river to thrust upward. The EQIL inventories are generated mostly by the traditional or semisupervised mapping approaches, which required a parameter's tuning or binary threshold decision in the practical application. In this study, we investigated the impact of optical data from the PlanetScope sensor and topographic factors from the ALOS sensor on EQIL mapping using a deep-learning convolution neural network (CNN). Thus, six training datasets were prepared and used to evaluate the performance of the CNN model using only optical data and using these data along with each and all topographic factors across the west coast of the Trishuli river in Nepal. For the first time, the Dempster–Shafer (D–S) model was applied for combining the resulting maps from each CNN stream that trained with different datasets. Finally, seven different resulting maps were compared against a detailed and accurate inventory of landslide polygons by a mean intersection-over-union (mIOU). Our results confirm that using the training dataset of the spectral information along with the topographic factor of the slope is helpful to distinguish the landslide bodies from other similar features, such as barren lands, and consequently increases the mapping accuracy. The improvement of the mIOU was a range from approximately zero to more than 17%. Moreover, the D–S model can be considered as an optimizer method to combine the results from different scenarios.

Highlights

  • T HE loss of property and human life due to earthquaketriggered landslides are significantly high, and due to climate change, it will certainly rise [1]

  • We present the remote sensing (RS) approach based on the optical satellite imagery from the PlanetScope sensor and topographical factors prepared from a 5 m resolution digital elevation model (DEM) acquired from the Japanese aerospace exploration agency JAXA ALOS sensor to detect the earthquake-induced landslide (EQIL) using the convolution neural network (CNN) model

  • The described architecture of the CNN model was trained with six training datasets from outside of the study site

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Summary

Introduction

T HE loss of property and human life due to earthquaketriggered landslides are significantly high, and due to climate change, it will certainly rise [1]. Almost 70% of casualties related to the earthquake are not caused by the shaking of the ground instead of affected by landslides [2]. About 47 000 earthquake-induced landslides (EQILs) casualties were reported from 2004 to 2010 [3]. The EQIL has direct and indirect long-term socioeconomic effects on the society along with the environmental effects [4]. There are some indirect consequences, such as the failure of landslide-induced dams, which lead to catastrophic floods in the downstream areas [7]–[9], which is again harmful to several mentioned public and private infrastructures

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