A Sparse Object Category Model for Efficient Learning and Exhaustive Recognition
- Creators
- Fergus, R.
-
Perona, P.
- Zisserman, A.
- Others:
- Schmid, C.
- Soatto, S.
- Tomasi, C.
Abstract
We present a "parts and structure" model for object category recognition that can be learnt efficiently and in a semi-supervised manner: the model is learnt from example images containing category instances, without requiring segmentation from background clutter. The model is a sparse representation of the object, and consists of a star topology configuration of parts modeling the output of a variety of feature detectors. The optimal choice of feature types (whose repertoire includes interest points, curves and regions) is made automatically. In recognition, the model may be applied efficiently in an exhaustive manner, bypassing the need for feature detectors, to give the globally optimal match within a query image. The approach is demonstrated on a wide variety of categories, and delivers both successful classification and localization of the object within the image.
Additional Information
© 2005 IEEE. Issue Date: 20-25 June 2005. Date of Current Version: 25 July 2005. We are very grateful for suggestions from and discussions with Michael Isard, Dan Huttenlocher and Alex Holub. Financial support was provided by: EC Project CogViSys; EC PASCAL Network of Excellence, IST-2002-506778; UK EPSRC; Caltech CNSE and the NSF.Additional details
- Eprint ID
- 24900
- DOI
- 10.1109/CVPR.2005.47
- Resolver ID
- CaltechAUTHORS:20110817-083145183
- EC Project CogViSys
- EC PASCAL Network of Excellence
- IST-2002-506778
- EPSRC (UK)
- Caltech Center for Neuromorphic Systems Engineering (CNSE)
- NSF
- Created
-
2011-08-17Created from EPrint's datestamp field
- Updated
-
2021-11-09Created from EPrint's last_modified field
- Other Numbering System Name
- INSPEC Accession Number
- Other Numbering System Identifier
- 8588898