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Conference Papers Year : 2013

Time-Sensitive Topic Models for Action Recognition in Videos

Romain Tavenard
Rémi Emonet

Abstract

In this paper, we postulate that temporal information is important for action recognition in videos. Keeping temporal information, videos are represented as word time documents. We propose to use time-sensitive probabilistic topic models and we extend them for the context of supervised learning. Our time-sensitive approach is compared to both PLSA and Bag-of-Words. Our approach is shown to both capture semantics from data and yield classification performance comparable to other methods, outperforming them when the amount of training data is low.
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Dates and versions

hal-00872048 , version 1 (21-02-2017)

Identifiers

  • HAL Id : hal-00872048 , version 1

Cite

Romain Tavenard, Rémi Emonet, Jean-Marc Odobez. Time-Sensitive Topic Models for Action Recognition in Videos. ICIP - International Conference on Image Processing, Sep 2013, Melbourne, Australia. ⟨hal-00872048⟩
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