Three for one and one for three: Flow, Segmentation, and Surface Normals

19 Jul 2018Hoang-An LeAnil S. BaslamisliThomas MensinkTheo Gevers

Optical flow, semantic segmentation, and surface normals represent different information modalities, yet together they bring better cues for scene understanding problems. In this paper, we study the influence between the three modalities: how one impacts on the others and their efficiency in combination... (read more)

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