Learning and Using Taxonomies For Fast Visual Categorization
- Creators
- Griffin, Gregory
-
Perona, Pietro
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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Additional details
- Eprint ID
- 18774
- Resolver ID
- CaltechAUTHORS:20100623-113346775
- NSF
- NSF IIS-0535292
- Office of Naval Research Multidisciplinary University Research Initiative (ONR MURI)
- N00014-06-0734
- Created
-
2010-06-25Created from EPrint's datestamp field
- Updated
-
2021-11-08Created from EPrint's last_modified field
- Series Name
- Proceedings – IEEE Computer Society Conference on Computer Vision and Pattern Recognition
- Other Numbering System Name
- INSPEC Accession Number
- Other Numbering System Identifier
- 10139715