articleJan 1, 2005Closed access

Learning object categories from Google's image search

University of Oxford · California Institute of Technology

Indexed incrossref

Abstract

Current approaches to object category recognition require datasets of training images to be manually prepared, with varying degrees of supervision. We present an approach that can learn an object category from just its name, by utilizing the raw output of image search engines available on the Internet. We develop a new model, TSI-pLSA, which extends pLSA (as applied to visual words) to include spatial information in a translation and scale invariant manner. Our approach can handle the high intra-class variability and large proportion of unrelated images returned by search engines. We evaluate tire models on standard test sets, showing performance competitive with existing methods trained on hand prepared…

Citation impact

709
total citations
FWCI
40.90
Percentile
100%
References
32
Citations per year

Authors

4

Topics & keywords

Keywords
  • Computer science
  • Probabilistic latent semantic analysis
  • Artificial intelligence
  • Object (grammar)
  • Information retrieval
  • The Internet
  • Invariant (physics)
  • Bag-of-words model in computer vision
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