1. What are the contributions mentioned in the paper "Multi-feature max-margin hierarchical bayesian model for action recognition" ?
In this paper, a multi-feature max-margin hierarchical Bayesian model ( MHBM ) is proposed for action recognition.. For recognition, the authors employ Gibbs classifiers to minimize the expected loss function based on the max-margin principle and use the classifiers as regularization terms of MHBM to perform Bayeisan estimation for classifier parameters together with the learning of STPs.. For test videos, the authors obtain the representations by the inference process and perform action recognition by the learned Gibbs classifiers.. For the learning and inference process, the authors derive an efficient Gibbs sampling algorithm to solve the proposed MHBM.. Extensive experiments on several datasets demonstrate both the representation power and the classification capability of their approach for action recognition.
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2. What future works have the authors mentioned in the paper "Multi-feature max-margin hierarchical bayesian model for action recognition" ?
Several future work may be developed in view of the following appealing properties of their model.. Firstly, it is easy to extend their model to three or more feature modalities to enrich the representations.
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