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ISBI
2008
IEEE

Support vector driven Markov random fields towards DTI segmentation of the human skeletal muscle

13 years 10 months ago
Support vector driven Markov random fields towards DTI segmentation of the human skeletal muscle
In this paper we propose a classification-based method towards the segmentation of diffusion tensor images. We use Support Vector Machines to classify diffusion tensors and we extend linear classification to the non linear case. To this end, we discuss and evaluate three different classes of kernels on the space of symmetric definite positive matrices that are well suited for the classification of tensor data. We impose spatial constraints by means of a Markov random field model that takes into account the result of SVM classification. Experimental results are provided for diffusion tensor images of human skeletal muscles. They demonstrate the potential of our method in discriminating the different muscle groups.
Radhouène Neji, Gilles Fleury, Jean Francoi
Added 31 May 2010
Updated 31 May 2010
Type Conference
Year 2008
Where ISBI
Authors Radhouène Neji, Gilles Fleury, Jean Francois Deux, Alain Rahmouni, Guillaume Bassez, Alexandre Vignaud, Nikos Paragios
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