3-D scene analysis via sequenced predictions over points and regions

ICRA(2011)

引用 164|浏览75
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摘要
We address the problem of understanding scenes from 3-D laser scans via per-point assignment of semantic labels. In order to mitigate the difficulties of using a graphical model for modeling the contextual relationships among the 3-D points, we instead propose a multi-stage inference procedure to capture these relationships. More specifically, we train this procedure to use point cloud statistics and learn relational information (e.g., tree-trunks are below vegetation) over fine (point-wise) and coarse (region-wise) scales. We evaluate our approach on three different datasets, that were obtained from different sensors, and demonstrate improved performance.
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关键词
3d scene analysis,statistics,sequenced predictions,graphical model,solid modelling,point cloud statistics,3d laser scans,solid modeling,point cloud,stacking,graphical models,laser scanning,vegetation
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