Extraction of landslide mass by deep learning using 3D topographical information :

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  • 3次元地形情報を用いた深層学習による地すべり移動体抽出
  • 3次元地形情報を用いた深層学習による地すべり移動体抽出 : 学習データに用いる地形図と抽出精度の関係
  • 3ジゲン チケイ ジョウホウ オ モチイタ シンソウ ガクシュウ ニ ヨル ジスベリ イドウタイ チュウシュツ : ガクシュウ データ ニ モチイル チケイズ ト チュウシュツ セイド ノ カンケイ
  • Significance of topographic map representation as training data
  • -学習データに用いる地形図と抽出精度の関係-

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Abstract

<p>  Publicly released high-resolution 3D topography information could be applied to topographical interpretation which enables to detect landslide-susceptible slopes. However, the burden on engineers or geologists is increasing due to heavy data volume for high-resolution terrain information. In the present study, deep learning was applied to interpretation of landslide topography as a method for efficiently analyzing high-resolution topography information. The deep learning was conducted based on four types of topographic maps such as a contour map, slope map, CS map and color enhancement CS map, and the target data was the Landslide Map in 1 : 50,000 scale published by the National Research Institute for Earth Science and Disaster Resilience. It was found that the locations of the landslide can be identified with a probability of up to 80% and that accuracy of prediction was highest using a further improved CS map with color enhancement. The application of deep learning to 3D topographical information is effective in supporting the interpretation work and judgment of engineers/geologists and preventing oversight as well.</p>

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