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Estimating athlete pose from monocular tv sports footage

Fastovets, M, Guillemaut, JY and Hilton, A (2014) Estimating athlete pose from monocular tv sports footage In: UNSPECIFIED UNSPECIFIED, pp. 161-178.

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© Springer International Publishing Switzerland 2014.Human pose estimation from monocular video streams is a challenging problem. Much of the work on this problem has focused on developing inference algorithms and probabilistic prior models based on learned measurements. Such algorithms face challenges in generalisation beyond the learned dataset.We propose an interactive model-based generative approach for estimating the human pose from uncalibratedmonocular video in unconstrained sportsTVfootage. Belief propagation over a spatio-temporal graph of candidate body part hypotheses is used to estimate a temporally consistent pose between user-defined keyframe constraints. Experimental results show that the proposed generative pose estimation framework is capable of estimating pose even in very challenging unconstrained scenarios.

Item Type: Book Section
Divisions : Surrey research (other units)
Authors :
Fastovets, M
Hilton, A
Date : 1 January 2014
DOI : 10.1007/978-3-319-09396-3_8
Depositing User : Symplectic Elements
Date Deposited : 17 May 2017 13:33
Last Modified : 23 Jan 2020 18:41

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