preprintJun 1, 2016Closed access

A Hierarchical Deep Temporal Model for Group Activity Recognition

Simon Fraser University

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Abstract

In group activity recognition, the temporal dynamics of the whole activity can be inferred based on the dynamics of the individual people representing the activity. We build a deep model to capture these dynamics based on LSTM (long short-term memory) models. To make use of these observations, we present a 2-stage deep temporal model for the group activity recognition problem. In our model, a LSTM model is designed to represent action dynamics of individual people in a sequence and another LSTM model is designed to aggregate person-level information for whole activity understanding. We evaluate our model over two datasets: the Collective Activity Dataset and a new volleyball dataset. Experimental results…

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521
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FWCI
23.82
Percentile
100%
References
65
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Authors

5

Topics & keywords

Keywords
  • Computer science
  • Artificial intelligence
  • Activity recognition
  • Baseline (sea)
  • Dynamics (music)
  • Aggregate (composite)
  • Action (physics)
  • Sequence (biology)
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