Multi-level index for global and partial content-based image retrieval

  • Authors:
  • Genevieve Jomier;Maude Manouvrier;Vincent Oria;Marta Rukoz

  • Affiliations:
  • Paris Dauphine University;Paris Dauphine University, France;New Jersey Institute of Technology;Ciudad Universitaria Av. Los Ilustres, Venezuela

  • Venue:
  • ICDEW '05 Proceedings of the 21st International Conference on Data Engineering Workshops
  • Year:
  • 2005

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Abstract

This article presents a quadtree-based data structure for effective indexing of images. An image is represented by a multi-level feature vector, computed by a recursive decomposition of the image into four quadrants and stored as a full fixed-depth balanced quadtree. A node of the quadtree stores a feature vector of the corresponding image quadrant. A more general quadtree-based structure called QUIP-tree (QUadtree-based Index for image retrieval and Pattern search) is used to index the multi-level feature vectors of the images and their quadrants. A QUIP-tree node is an entry to a set of clusters that groups similar quadrants according to some pre-defined distances. The QUIP-tree allows a multi-level filtering in content-based image retrieval as well as partial queries on images.