Self-supervised point-cloud learning for mapping rainfall-induced landslide types
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更新:2026-07-01 15:25:54 浏览:0次
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摘要
Extreme-rainfall landslide clusters are numerous, morphologically continuous and process-mixed, while event inventories mainly record boundaries and locations, limiting type and process interpretation. We develop a self-supervised framework for landslide-type recognition and probability mapping. Terrain point clouds encode landslide boundaries, internal topography and hydrogeomorphic context, and a terrain-context model transfers object-level type structure into spatially continuous probabilities. For the Wuping event in Fujian, China, 20,440 samples were interpreted as planar, flow-like, convergent and micro landslides. Except for micro landslides, the three main types were separable from terrain context, with differences mainly controlled by channel proximity, slope-flow paths and local relief. Terrain-response-unit mapping and 82 field photographs support post-event mapping, risk interpretation and field identification.
关键词
rainfall-induced landslides,self-supervised learning,terrain point cloud,probabilistic mapping,field identification
稿件作者
Senlin Luo
Tongji University
Wuwei Mao
Tongji University
Zijin Fu
Tongji University
Mairo Floris
University of Padova
Sansar Raj Meena
University of Padova
Yu Huang
Tongji University
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