Using SVDD in SimpleMKL for 3D-Shapes Filtering
Abstract
This paper proposes the adaptation of Support Vector Data Description (SVDD) to the multiple kernel case (MK-SVDD), based on SimpleMKL. It also introduces a variant called Slim-MK-SVDD that is able to produce a tighter frontier around the data. For the sake of comparison, the equivalent methods are also developed for One-Class SVM, known to be very similar to SVDD for certain shapes of kernels. Those algorithms are illustrated in the context of 3D-shapes filtering and outliers detection. For the 3D-shapes problem, the objective is to be able to select a sub-category of 3D-shapes, each sub-category being learned with our algorithm in order to create a filter. For outliers detection, we apply the proposed algorithms for unsupervised outliers detection as well as for the supervised case.
Cite
@article{arxiv.1712.02658,
title = {Using SVDD in SimpleMKL for 3D-Shapes Filtering},
author = {Gaëlle Loosli and Hattoibe Aboubacar},
journal= {arXiv preprint arXiv:1712.02658},
year = {2017}
}
Comments
9 pages, 6 figures, conference : https://cap2014.sciencesconf.org/