DocumentCode
2716721
Title
Power mean SVM for large scale visual classification
Author
Wu, Jianxin
Author_Institution
Sch. of Comput. Eng., Nanyang Technol. Univ., Singapore, Singapore
fYear
2012
fDate
16-21 June 2012
Firstpage
2344
Lastpage
2351
Abstract
PmSVM (Power Mean SVM), a classifier that trains significantly faster than state-of-the-art linear and non-linear SVM solvers in large scale visual classification tasks, is presented. PmSVM also achieves higher accuracies. A scalable learning method for large vision problems, e.g., with millions of examples or dimensions, is a key component in many current vision systems. Recent progresses have enabled linear classifiers to efficiently process such large scale problems. Linear classifiers, however, usually have inferior accuracies in vision tasks. Non-linear classifiers, on the other hand, may take weeks or even years to train. We propose a power mean kernel and present an efficient learning algorithm through gradient approximation. The power mean kernel family include as special cases many popular additive kernels. Empirically, PmSVM is up to 5 times faster than LIBLINEAR, and two times faster than state-of-the-art additive kernel classifiers. In terms of accuracy, it outperforms state-of-the-art additive kernel implementations, and has major advantages over linear SVM.
Keywords
image classification; learning (artificial intelligence); support vector machines; LIBLINEAR; PmSVM; additive kernels; gradient approximation; large scale visual classification tasks; large vision problems; learning algorithm; linear classifiers; nonlinear SVM solvers; power mean SVM; power mean kernel family; scalable learning method; Accuracy; Additives; Approximation algorithms; Approximation methods; Kernel; Support vector machines; Training;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Vision and Pattern Recognition (CVPR), 2012 IEEE Conference on
Conference_Location
Providence, RI
ISSN
1063-6919
Print_ISBN
978-1-4673-1226-4
Electronic_ISBN
1063-6919
Type
conf
DOI
10.1109/CVPR.2012.6247946
Filename
6247946
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