Authors
Subhransu Maji, Alexander C Berg, Jitendra Malik
Publication date
2008/6/23
Conference
2008 IEEE conference on computer vision and pattern recognition
Pages
1-8
Publisher
IEEE
Description
Straightforward classification using kernelized SVMs requires evaluating the kernel for a test vector and each of the support vectors. For a class of kernels we show that one can do this much more efficiently. In particular we show that one can build histogram intersection kernel SVMs (IKSVMs) with runtime complexity of the classifier logarithmic in the number of support vectors as opposed to linear for the standard approach. We further show that by precomputing auxiliary tables we can construct an approximate classifier with constant runtime and space requirements, independent of the number of support vectors, with negligible loss in classification accuracy on various tasks. This approximation also applies to 1 - chi 2 and other kernels of similar form. We also introduce novel features based on a multi-level histograms of oriented edge energy and present experiments on various detection datasets. On the INRIA …
Total citations
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Scholar articles
S Maji, AC Berg, J Malik - 2008 IEEE conference on computer vision and pattern …, 2008