Temporal motion models for monocular and multiview 3D human body tracking |
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Authors: | Raquel Urtasun David J. Fleet Pascal Fua |
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Affiliation: | aComputer Vision Laboratory, Swiss Federal Institute of Technology (EPFL), 1015 Lausanne, Switzerland;bDepartment of Computer Science, University of Toronto, Canada M5S 3H5 |
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Abstract: | We explore an approach to 3D people tracking with learned motion models and deterministic optimization. The tracking problem is formulated as the minimization of a differentiable criterion whose differential structure is rich enough for optimization to be accomplished via hill-climbing. This avoids the computational expense of Monte Carlo methods, while yielding good results under challenging conditions. To demonstrate the generality of the approach we show that we can learn and track cyclic motions such as walking and running, as well as acyclic motions such as a golf swing. We also show results from both monocular and multi-camera tracking. Finally, we provide results with a motion model learned from multiple activities, and show how this models might be used for recognition. |
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Keywords: | Tracking Motion models Optimization |
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