Grouping-Based Low-Rank Trajectory Completion and 3D Reconstruction

NeurIPS 2014 Katerina FragkiadakiMarta SalasPablo ArbelaezJitendra Malik

Extracting 3D shape of deforming objects in monocular videos, a task known as non-rigid structure-from-motion (NRSfM), has so far been studied only on synthetic datasets and controlled environments. Typically, the objects to reconstruct are pre-segmented, they exhibit limited rotations and occlusions, or full-length trajectories are assumed... (read more)

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