Dimensionality reduction using a Gaussian Process Annealed Particle Filter for tracking and classification of articulated body motions

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This paper presents a framework for 3D articulated human body tracking and action classification. The method is based on nonlinear dimensionality reduction of high-dimensional data space to low dimensional latent space. Human body motion is described by concatenation of low-dimensional manifolds that characterize different motion types. We introduce a body pose tracker thats uses the learned mapping function from latent space to body pose space. The trajectories in the latent space provide low dimensional representations of body pose sequences representing a specific action type. These trajectories are used to classify human actions. The approach is illustrated on the HumanEvaI and HumanEvaII datasets, as well as on other datasets that include scenarios of interactions between people. A comparison to other methods is presented. The tracker is shown to be robust when classifying individual actions and is also capable of the harder task of classifying interactions between people.

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论文评审过程:Received 11 April 2008, Accepted 14 December 2010, Available online 6 January 2011.

论文官网地址:https://doi.org/10.1016/j.cviu.2010.12.002