Frontiers in Earth Science (Sep 2023)

Automatic landslide identification by Dual Graph Convolutional Network and GoogLeNet model-a case study for Xinjiang province, China

  • Shiwei Ma,
  • Shiwei Ma,
  • Shiwei Ma,
  • Shiwei Ma,
  • Shouding Li,
  • Shouding Li,
  • Shouding Li,
  • Xintao Bi,
  • Hua Qiao,
  • Zhigang Duan,
  • Yiming Sun,
  • Yiming Sun,
  • Yiming Sun,
  • Jingyun Guo,
  • Jingyun Guo,
  • Jingyun Guo,
  • Xiao Li,
  • Xiao Li,
  • Xiao Li

DOI
https://doi.org/10.3389/feart.2023.1248340
Journal volume & issue
Vol. 11

Abstract

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Landslides are a natural disaster that exists widely in the world and poses a great threat to human life and property, so it is of great importance to identify and locate landslides. Traditional manual interpretation can effectively identify landslides, but its efficiency is very low for large interpreted areas. In this sense, a landslide recognition method based on the Dual Graph Convolutional Network (DGCNet) is proposed to identify the landslide in remote sensing images quickly and accurately. The remote sensing image (regional remote sensing image) of the northern mountainous area of Tuergen Township, Xinyuan County, Xinjiang Province, was obtained by GeoEye-1 (spatial resolution: 0.5 m). Then, the DGCNet is used to train the labeled images, which finally shows good accuracy of landslide recognition. To show the difference with the traditional convolutional network model, this paper adopts a convolution neural network algorithm named GoogLeNet for image recognition to carry out a comparative analysis, the remote sensing satellite images (single terrain image) of Xinyuan County, Xinjiang Province is used as the data set, and the prediction accuracy is 81.25%. Compared with the GoogLeNet model, the DGCNet model has a larger identification range, which provides a new method for landslide recognition of large-scale regional remote sensing images, but the performance of DGCNet is highly dependent on the quality and characteristics of the input image. If the input data quality is poor or the image structure is unclear, the model’s performance may decline.

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