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A Bayesian framework for extracting human gait using strong prior knowledge

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paper.dvi ACCEPTED FOR PUBLICATION IN IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE 1 A Bayesian Framework for Extracting Human Gait Using Strong Prior Knowledge Z. Zhou, A. Pru¨gel-Bennett and R. I. Damper Senior Member, IEEE Abstract Extracting full-body motion of walking people from monocular video sequences in complex, real- world environments is an important and difficult problem, going beyond simple tracking, whose sat- isfactory solution demands an appropriate balance between use of prior knowledge and learning from data. We propose a consistent Bayesian framework for introducing strong prior knowledge into a system for extracting human gait. In this work, the strong prior is built from a simple articulated model having both time-invariant (static) and time-variant (dynamic) parameters. The model is easily modified to cater for situations such as walkers wearing clothing that obscures the limbs. The statistics of the parameters are learned from high-quality (indoor laboratory) data, and the Bayesian framework then allows us to ‘bootstrap’ to accurate gait extraction on the noisy images typical of cluttered, outdoor scenes. To achieve automatic fitting, we use a hidden Markov model to detect the phases of images in a walking cycle. We demonstrate our approach on silhouettes extracted from fronto-parallel (“sideways on”) sequences of walkers under both high-quality indoor and noisy outdoor conditions. As well as high-quality data with synthetic noise and occlusions added, we also test walkers with rucksacks, skirts and trench coats. Results are quantified in terms of chamfer distance and average pixel error between automatically extracted body points and corresponding hand-labelled points. No one part of the system is novel in itself, but the overall framework makes it feasible to extract gait from very much poorer quality image sequences than hitherto. This is confirmed by comparing person identification by gait using our method and a wel

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