Sparse Coding for Learning Interpretable Spatio-Temporal Primitives

Part of Advances in Neural Information Processing Systems 23 (NIPS 2010)

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Authors

Taehwan Kim, Gregory Shakhnarovich, Raquel Urtasun

Abstract

Sparse coding has recently become a popular approach in computer vision to learn dictionaries of natural images. In this paper we extend sparse coding to learn interpretable spatio-temporal primitives of human motion. We cast the problem of learning spatio-temporal primitives as a tensor factorization problem and introduce constraints to learn interpretable primitives. In particular, we use group norms over those tensors, diagonal constraints on the activations as well as smoothness constraints that are inherent to human motion. We demonstrate the effectiveness of our approach to learn interpretable representations of human motion from motion capture data, and show that our approach outperforms recently developed matching pursuit and sparse coding algorithms.