Unsupervised feature learning for 3D scene labeling

Kevin Lai, Liefeng Bo,Dieter Fox

Robotics and Automation(2014)

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摘要
This paper presents an approach for labeling objects in 3D scenes. We introduce HMP3D, a hierarchical sparse coding technique for learning features from 3D point cloud data. HMP3D classifiers are trained using a synthetic dataset of virtual scenes generated using CAD models from an online database. Our scene labeling system combines features learned from raw RGB-D images and 3D point clouds directly, without any hand-designed features, to assign an object label to every 3D point in the scene. Experiments on the RGB-D Scenes Dataset v.2 demonstrate that the proposed approach can be used to label indoor scenes containing both small tabletop objects and large furniture pieces.
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关键词
CAD,image colour analysis,solid modelling,unsupervised learning,virtual reality,3D point cloud data,3D scene labeling,CAD model,HMP3D classifiers,RGB-D images,RGB-D scenes dataset v.2,furniture pieces,hand-designed feature,hierarchical sparse coding technique,indoor scenes,learning features,object label,online database,scene labeling system,synthetic dataset,tabletop objects,unsupervised feature learning,virtual scenes
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