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MICCAI
2007
Springer

Object Localization Based on Markov Random Fields and Symmetry Interest Points

14 years 5 months ago
Object Localization Based on Markov Random Fields and Symmetry Interest Points
We present an approach to detect anatomical structures by configurations of interest points, from a single example image. The representation of the configuration is based on Markov Random Fields, and the detection is performed in a single iteration by the max-sum algorithm. Instead of sequentially matching pairs of interest points, the method takes the entire set of points, their local descriptors and the spatial configuration into account to find an optimal mapping of modeled object to target image. The image information is captured by symmetrybased interest points and local descriptors derived from Gradient Vector Flow. Experimental results are reported for two data-sets showing the applicability to complex medical data.
Branislav Micusík, Georg Langs, Horst Bisch
Added 14 Nov 2009
Updated 14 Nov 2009
Type Conference
Year 2007
Where MICCAI
Authors Branislav Micusík, Georg Langs, Horst Bischof, Klaus Friedrich, Lech Szumilas, Philipp Peloschek, Rene Donner
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