Speeding up active relevance feedback with approximate kNN retrieval for hyperplane queries

  • Authors:
  • Michel Crucianu;Daniel Estevez;Vincent Oria;Jean-Philippe Tarel

  • Affiliations:
  • Vertigo-CEDRIC, CNAM, 292 rue St. Martin, 75141 Paris Cedex 03, France;Vertigo-CEDRIC, CNAM, 292 rue St. Martin, 75141 Paris Cedex 03, France;Department of Computer Science, New Jersey Institute of Technology, University Heights, Newark, NJ 07102;Laboratoire Central des Ponts et Chaussées, 58 Bd. Lefebvre, 75015 Paris, France

  • Venue:
  • International Journal of Imaging Systems and Technology - Multimedia Information Retrieval
  • Year:
  • 2008

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Abstract

In content-based image retrieval, relevance feedback (RF) is a prominent method for reducing the “semantic gap” between the low-level features describing the content and the usually higher-level meaning of user's target. Recent RF methods are able to identify complex target classes after relatively few feedback iterations. However, because the computational complexity of such methods is linear in the size of the database, retrieval can be quite slow on very large databases. To address this scalability issue for active learning-based RF, we put forward a method that consists in the construction of an index in the feature space associated to a kernel function and in performing approximate kNN hyperplane queries with this feature space index. The experimental evaluation performed on two image databases show that a significant speedup can be achieved at the expense of a limited increase in the number of feedback rounds. © 2008 Wiley Periodicals, Inc. Int J Imaging Syst Technol, 18, 150–159, 2008