articleJun 1, 2011Closed access

Learning hierarchical invariant spatio-temporal features for action recognition with independent subspace analysis

Stanford University

Indexed incrossref

Abstract

Previous work on action recognition has focused on adapting hand-designed local features, such as SIFT or HOG, from static images to the video domain. In this paper, we propose using unsupervised feature learning as a way to learn features directly from video data. More specifically, we present an extension of the Independent Subspace Analysis algorithm to learn invariant spatio-temporal features from unlabeled video data. We discovered that, despite its simplicity, this method performs surprisingly well when combined with deep learning techniques such as stacking and convolution to learn hierarchical representations. By replacing hand-designed features with our learned features, we achieve classification…

Citation impact

983
total citations
FWCI
72.46
Percentile
100%
References
62
Citations per year

Authors

4

Topics & keywords

Keywords
  • Computer science
  • Artificial intelligence
  • Scale-invariant feature transform
  • Subspace topology
  • Pattern recognition (psychology)
  • Action recognition
  • Feature learning
  • Invariant (physics)
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