RGB-D flow: Dense 3-D motion estimation using color and depth

Robotics and Automation(2013)

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摘要
3-D motion estimation is a fundamental problem that has far-reaching implications in robotics. A scene flow formulation is attractive as it makes no assumptions about scene complexity, object rigidity, or camera motion. RGB-D cameras provide new information useful for computing dense 3-D flow in challenging scenes. In this work we show how to generalize two-frame variational 2-D flow algorithms to 3-D. We show that scene flow can be reliably computed using RGB-D data, overcoming depth noise and outperforming previous results on a variety of scenes. We apply dense 3-D flow to rigid motion segmentation.
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关键词
cameras,image colour analysis,image segmentation,image sequences,motion estimation,natural scenes,RGB-D camera motion,RGB-D flow,color information,dense 3D flow,dense 3D motion estimation,depth information,depth noise,object rigidity,rigid motion segmentation,robotics,scene complexity,scene flow formulation,two-frame variational 2D flow algorithm,two-frame variational 3D flow algorithm
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