Combining a bottom up and top down classifiers for the segmentation of the left ventricle from cardiac imagery
Date
2013
Authors
Nascimento, J.
Carneiro, G.
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Conference paper
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2013 IEEE International Conference on Image Processing, ICIP 2013 Proceedings, Melbourne, Vic. Australia, 15-18 September 2013: pp.743-746
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Jacinto C. Nascimento, Gustavo Carneiro
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International Conference on Image Processing (20th : 2013 : Melbourne)
Abstract
The segmentation of anatomical structures is a crucial first stage of most medical imaging analysis procedures. A primary example is the segmentation of the left ventricle (LV), from cardiac im- agery. Accuracy in the segmentation often requires a considerable amount of expert intervention and guidance which are expensive. Thus, automating the segmentation is welcome, but difficult be- cause of the LV shape variability within and across individuals. To cope with this difficulty, the algorithm should have the skills to interpret the shape of the anatomical structure (i.e. LV shape) us- ing distinct kinds of information, (i.e. different views of the same feature space). These different views will ascribe to the algorithm a more general capability that surely allows for the robustness in the segmentation accuracy. In this paper, we propose an on-line co-training algorithm using a bottom-up and top-down classifiers (each one having a different view of the data) to perform the seg- mentation of the LV. In particular, we consider a setting in which the LV shape can be partitioned into two distinct views and use a co-training as a way to boost each of the classifiers, thus providing a principled way to use both views together. We testify the use- fulness of the approach on a public data base illustrating that the approach compares favorably with other recent proposed method- ologies.
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©2013 IEEE