Dense 3D semantic mapping of indoor scenes from RGB-D images

Robotics and Automation(2014)

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摘要
Dense semantic segmentation of 3D point clouds is a challenging task. Many approaches deal with 2D semantic segmentation and can obtain impressive results. With the availability of cheap RGB-D sensors the field of indoor semantic segmentation has seen a lot of progress. Still it remains unclear how to deal with 3D semantic segmentation in the best way. We propose a novel 2D-3D label transfer based on Bayesian updates and dense pairwise 3D Conditional Random Fields. This approach allows us to use 2D semantic segmentations to create a consistent 3D semantic reconstruction of indoor scenes. To this end, we also propose a fast 2D semantic segmentation approach based on Randomized Decision Forests. Furthermore, we show that it is not needed to obtain a semantic segmentation for every frame in a sequence in order to create accurate semantic 3D reconstructions. We evaluate our approach on both NYU Depth datasets and show that we can obtain a significant speed-up compared to other methods.
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关键词
Bayes methods,decision trees,image colour analysis,image reconstruction,image segmentation,mobile robots,statistical distributions,3D semantic reconstruction,Bayesian updates,RGB-D images,conditional random fields,dense 3D semantic mapping,indoor semantic segmentation,mobile robotics,randomized decision forests
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