DocumentCode
3209728
Title
Scalable discriminant feature selection for image retrieval and recognition
Author
Vasconcelos, Nuno ; Vasconcelos, Manuela
Author_Institution
Stat. Visual Comput. Lab., California Univ., San Diego, CA, USA
Volume
2
fYear
2004
fDate
27 June-2 July 2004
Abstract
Problems such as object recognition or image retrieval require feature selection (FS) algorithms that scale well enough to be applicable to databases containing large numbers of image classes and large amounts of data per class. We exploit recent connections between information theoretic feature selection and minimum Bayes error solutions to derive FS algorithms that are optimal in a discriminant sense without compromising scalability. We start by formalizing the intuition that optimal FS must favor discriminant features while penalizing discriminant features that are redundant. We then rely on this result to derive a new family of FS algorithms that enables an explicit trade-off between complexity and classification optimality. This trade-off is controlled by a parameter that encodes the order of feature redundancies that must be explicitly modeled to achieve the optimal solution. Experimental results on databases of natural images show that this order is usually low, enabling optimal FS with very low complexity.
Keywords
Bayes methods; feature extraction; image recognition; image retrieval; object recognition; image recognition; image retrieval; minimum Bayes error solutions; object recognition; scalable discriminant feature selection; Biology computing; Face detection; Image databases; Image recognition; Image retrieval; Information retrieval; Laboratories; Large-scale systems; Scalability; Spatial databases;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Vision and Pattern Recognition, 2004. CVPR 2004. Proceedings of the 2004 IEEE Computer Society Conference on
ISSN
1063-6919
Print_ISBN
0-7695-2158-4
Type
conf
DOI
10.1109/CVPR.2004.1315242
Filename
1315242
Link To Document