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Semantic Classification of 3D Point Clouds with Multiscale Spherical Neighborhoods

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This paper introduces a new definition of multiscale neighborhoods in 3D point clouds. This definition, based on spherical neighborhoods and proportional subsampling, allows the computation of features with a consistent geometrical meaning, which is not the case when using k-nearest neighbors. With an appropriate learning strategy, the proposed features can be used in a random forest to classify 3D points. In this semantic classification task, we show that our multiscale features outperform state-of-the-art features using the same experimental conditions. Furthermore, their classification power competes with more elaborate classification approaches including Deep Learning methods.

Hugues Thomas, Jean-Emmanuel Deschaud, Beatriz Marcotegui, Fran\c{c}ois Goulette, Yann Le Gall• 2018

Related benchmarks

TaskDatasetResultRank
Semantic segmentationS3DIS (Area 5)
mIOU49.8
799
Semantic segmentationSemantic3D reduced-8 (test)
mIoU62.7
33
Semantic segmentationSemantic3D (reduced-8)
mIoU62.7
30
Semantic segmentationNPM3D
mIoU56.3
20
3D Scene SegmentationSemantic3D reduced-8 online benchmark
mIoU62.7
7
Semantic segmentationSemantic3D reduced-8 challenge (Fold 5)
Man-made Terrain IoU87.6
6
3D Scene SegmentationParis-Lille-3D online benchmark (test)
mIoU56.3
4
Point Cloud ClassificationRue Madame (test)
Facade IoU98.22
3
Point Cloud ClassificationRue Cassette (test)
Facade IoU97.27
3
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