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Nonparametric Bayesian models for unsupervised activity recognition and tracking

Neil Dhir, Yura Perov, Frank Wood

Year
2016
Citations
3

Abstract

Human locomotion and activity recognition systems form a critical part in a robot's ability to safely and effectively operate in a environment populated with human end users. Previous work in this area relies upon strong assumptions about the labels in the training data; e.g. that are noise-free and that they exist at all. Our approach does not predefine the relevant behaviours or their number, as both are learned directly from observations, similar to real-world human-robot interactions, where labels are neither available. Instead we introduce models that make no assumptions about the state space, by presenting a fully unsupervised nonparametric Bayesian recognition approach, in which we leverage recent advances in state space modelling with automatic inference using probabilistic programming. We demonstrate the utility of full model optimisation using Bayesian optimisation and validate our approach on several challenging problems, using different feature modalities.

Keywords

Computer scienceArtificial intelligenceLeverage (statistics)Machine learningInferenceBayesian probabilityProbabilistic logicBayesian inferenceActivity recognitionNonparametric statistics

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