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Published August 2008 | Published
Book Section - Chapter Open

Learning and Using Taxonomies For Fast Visual Categorization

Abstract

The computational complexity of current visual categorization algorithms scales linearly at best with the number of categories. The goal of classifying simultaneously N_(cat) = 10^4 - 10^5 visual categories requires sub-linear classification costs. We explore algorithms for automatically building classification trees which have, in principle, log N_(cat) complexity. We find that a greedy algorithm that recursively splits the set of categories into the two minimally confused subsets achieves 5-20 fold speedups at a small cost in classification performance. Our approach is independent of the specific classification algorithm used. A welcome by-product of our algorithm is a very reasonable taxonomy of the Caltech-256 dataset.

Additional Information

© 2009 IEEE. Issue Date : 23-28 June 2008; Date of Current Version : 05 August 2008. Research funded by National Science Foundation grant NSF IIS-0535292 and by ONR MURI grant N00014-06- 0734.

Attached Files

Published - Griffin2008p85632008_Ieee_Conference_On_Computer_Vision_And_Pattern_Recognition_Vols_1-12.pdf

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Griffin2008p85632008_Ieee_Conference_On_Computer_Vision_And_Pattern_Recognition_Vols_1-12.pdf

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Created:
August 19, 2023
Modified:
January 12, 2024