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Showing papers by "Miguel Ángel González Ballester published in 2012"


Book ChapterDOI
05 Oct 2012
TL;DR: This paper presents a method for cardiac scar detection and segmentation based on supervised learning and level set segmentation, and trains a model of the appearance of scar tissue using a Support Vector Machines classifier on image-derived descriptors.
Abstract: Delayed Enhancement Magnetic Resonance Imaging can be used to non-invasively differentiate viable from non-viable myocardium within the Left Ventricle in patients suffering from myocardial diseases. Automated segmentation of scarified tissue can be used to accurately quantify the percentage of myocardium affected. This paper presents a method for cardiac scar detection and segmentation based on supervised learning and level set segmentation. First, a model of the appearance of scar tissue is trained using a Support Vector Machines classifier on image-derived descriptors. Based on the areas detected by the classifier, an accurate segmentation is performed using a segmentation method based on level sets.

2 citations