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arxiv: 1608.04642 · v1 · pith:XIOKKBT6new · submitted 2016-08-16 · 💻 cs.CV

Temporally Consistent Motion Segmentation from RGB-D Video

classification 💻 cs.CV
keywords motionobjectrgb-dsegmentationapproachconsistentnovelrigid
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We present a method for temporally consistent motion segmentation from RGB-D videos assuming a piecewise rigid motion model. We formulate global energies over entire RGB-D sequences in terms of the segmentation of each frame into a number of objects, and the rigid motion of each object through the sequence. We develop a novel initialization procedure that clusters feature tracks obtained from the RGB data by leveraging the depth information. We minimize the energy using a coordinate descent approach that includes novel techniques to assemble object motion hypotheses. A main benefit of our approach is that it enables us to fuse consistently labeled object segments from all RGB-D frames of an input sequence into individual 3D object reconstructions.

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