A novel approach for efficient SVM classification with histogram intersection kernel

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Abstract

The kernel trick - commonly used in machine learning and computer vision - enables learning of non-linear decision functions without having to explicitly map the original data to a high dimensional space. However, at test time, it requires evaluating the kernel with each one of the support vectors, which is time consuming. In this paper, we propose a novel approach for learning non-linear SVM corresponding to the histogram intersection kernel without using the kernel trick. We formulate the exact non-linear problem in the original space and show how to perform classification directly in this space. The learnt classifier incorporates non-linearity while maintaining O(d) testing complexity (for d-dimensional input space), compared to O(d ×Nsv) when using the kernel trick. We show that the SVM problem with histogram intersection kernel is quasi-convex in input space and outline an iterative algorithm to solve it. The proposed approach has been validated in experiments where it is compared with other linear SVM-based methods, showing that the proposed method achieves similar or better performance at lower computational and memory costs.

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APA

Sharma, G., & Jurie, F. (2013). A novel approach for efficient SVM classification with histogram intersection kernel. In BMVC 2013 - Electronic Proceedings of the British Machine Vision Conference 2013. British Machine Vision Association, BMVA. https://doi.org/10.5244/C.27.10

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