Learning and Tracking Cyclic Human Motion

Ormoneit, Dirk, Sidenbladh, Hedvig, Black, Michael J., Hastie, Trevor

Neural Information Processing Systems 

We estimate a statistical model of typical activities from a large set of 3D periodic human motion data by segmenting these data automatically into "cycles". Then the mean and the principal componentsof the cycles are computed using a new algorithm that accounts for missing information and enforces smooth transitions betweencycles. The learned temporal model provides a prior probability distribution over human motions that can be used in a Bayesian framework for tracking human subjects in complex monocular video sequences and recovering their 3D motion. 1 Introduction The modeling and tracking of human motion in video is important for problems as varied as animation, video database search, sports medicine, and human-computer interaction. Technically, the human body can be approximated by a collection of articulated limbs and its motion can be thought of as a collection of time-series describing the joint angles as they evolve over time. A key challenge in modeling these joint angles involves decomposing the time-series into suitable temporal primitives.

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