Probabilistic Dense Reconstruction from a Moving Camera

2018 IEEE/RSJ INTERNATIONAL CONFERENCE ON INTELLIGENT ROBOTS AND SYSTEMS (IROS)(2019)

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摘要
This paper presents a probabilistic approach for online dense reconstruction using a single monocular camera moving through the environment. Compared to spatial stereo, depth estimation from motion stereo is challenging due to insufficient parallaxes, visual scale changes, pose errors, etc. We utilize both the spatial and temporal correlations of consecutive depth estimates to increase the robustness and accuracy of monocular depth estimation. An online, recursive, probabilistic scheme to compute depth estimates, with corresponding covariances and inlier probability expectations, is proposed in this work. We integrate the obtained depth hypotheses into dense 3D models in an uncertainty-aware way. We show the effectiveness and efficiency of our proposed approach by comparing it with state-of-the-art methods in the TUM RGB-D SLAM and ICL-NUIM dataset. Online indoor and outdoor experiments are also presented for performance demonstration.
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关键词
TUM RGB-D SLAM,ICL-NUIM dataset,spatial correlations,visual scale changes,insufficient parallaxes,motion stereo,spatial stereo,single monocular camera,online dense reconstruction,probabilistic approach,moving camera,probabilistic dense reconstruction,outdoor experiments,dense 3D models,inlier probability expectations,depth estimates,probabilistic scheme,monocular depth estimation,temporal correlations
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