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Published November 2011 | public
Journal Article

Unsupervised Organization of Image Collections: Taxonomies and Beyond

Abstract

We introduce a nonparametric Bayesian model, called TAX, which can organize image collections into a tree-shaped taxonomy without supervision. The model is inspired by the Nested Chinese Restaurant Process (NCRP) and associates each image with a path through the taxonomy. Similar images share initial segments of their paths and thus share some aspects of their representation. Each internal node in the taxonomy represents information that is common to multiple images. We explore the properties of the taxonomy through experiments on a large (~ 10^4) image collection with a number of users trying to locate quickly a given image. We find that the main benefits are easier navigation through image collections and reduced description length. A natural question is whether a taxonomy is the optimal form of organization for natural images. Our experiments indicate that although taxonomies can organize images in a useful manner, more elaborate structures may be even better suited for this task.

Additional Information

© 2011 IEEE. Manuscript received 6 Apr. 2009; revised 29 Jan. 2010; accepted 2 Nov. 2010; published online 18 Apr. 2011. Recommended for acceptance by A. Torralba. This material is based upon work supported by the US National Science Foundation under Grant Nos. 0447903, 0535278 and IIS-0535292, and by US Office of Naval Research MURI grant 00014-06-1-0734. An early version of this paper appeared in [18]. The authors would like to thank Marco Andreetto for useful suggestions.

Additional details

Created:
August 22, 2023
Modified:
October 24, 2023