Abstract

Seismic landslides are the most common and highly destructive earthquake-triggered geological hazards. They are large in scale and occur simultaneously in many places. Therefore, obtaining landslide information quickly after an earthquake is the key to disaster mitigation and relief. The survey results show that most of the landslide-information extraction methods involve too much manual participation, resulting in a low degree of automation and the inability to provide effective information for earthquake rescue in time. In order to solve the abovementioned problems and improve the efficiency of landslide identification, this paper proposes an automatic landslide identification method named improved U-Net model. The intelligent extraction of post-earthquake landslide information is realized through the automatic extraction of hierarchical features. The main innovations of this paper include the following: (1) On the basis of the three RGB bands, three new bands, DSM, slope, and aspect, with spatial information are added, and the number of feature parameters of the training samples is increased. (2) The U-Net model structure is rebuilt by adding residual learning units during the up-sampling and down-sampling processes, to solve the problem that the traditional U-Net model cannot fully extract the characteristics of the six-channel landslide for its shallow structure. At the end of the paper, the new method is used in Jiuzhaigou County, Sichuan Province, China. The results show that the accuracy of the new method is 91.3%, which is 13.8% higher than the traditional U-Net model. It is proved that the new method is effective and feasible for the automatic extraction of post-earthquake landslides.

Highlights

  • In China, especially in mountainous areas, seismic landslides are the most common and highly destructive earthquake-triggered geological disasters [1]

  • A landslide dataset is labeled with post-earthquake aerial remote-sensing imageries, and an improved U-Net model is proposed for earthquake-triggered landslides extraction

  • In order to fully extract the landslides by six channels, a residual learning unit was added to the traditional U-Net model to deepen the network layers

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Summary

Introduction

In China, especially in mountainous areas, seismic landslides are the most common and highly destructive earthquake-triggered geological disasters [1]. In some major earthquakes, the loss of life and property caused by earthquake landslides can account for more than 50% of the total earthquake losses [3]. Obtaining information about earthquake landslides is the key to quickly organize rescues to save people’s lives and property at the first time [4]. It is difficult to extract and analyze the landslides’ information in the traditional field surveys. There are problems such as heavy task, low efficiency, high cost, and unintuitive information. It is of great significance to get information on a landslide situation as soon as possible, make a reasonable rescue plan, determine the potential hazards for key investigation, reasonably arrange the affected residents, and avoid secondary disasters [7]

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