Title of article :
Agentification of Markov model-based segmentation: Application to magnetic resonance brain scans
Author/Authors :
Scherrer، نويسنده , , Benoit and Dojat، نويسنده , , Michel and Forbes، نويسنده , , Florence and Garbay، نويسنده , , Catherine، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Pages :
15
From page :
81
To page :
95
Abstract :
SummaryObjective random field (MRF) models have been traditionally applied to the task of robust-to-noise image segmentation. Most approaches estimate MRF parameters on the whole image via a global expectation–maximization (EM) procedure. The resulting estimated parameters are likely to be uncharacteristic of local image features. Instead, we propose to distribute a set of local MRF models within a multiagent framework. als and methods segmentation agents estimate local MRF models via local EM procedures and cooperate to ensure a global consistency of local models. We demonstrate different types of cooperations between agents that lead to additional levels of regularization compared to the standard label regularization provided by MRF. Embedding Markovian EM procedures into a multiagent paradigm shows interesting properties that are illustrated on magnetic resonance (MR) brain scan segmentation. s erative tissue and subcortical structure segmentation approach is designed with such a framework, where both models mutually improve. Several experiments are reported and illustrate the working of Markovian EM agents. The evaluation of MR brain scan segmentation was performed using both phantoms and real 3 T brain scans. It showed a robustness to intensity non-uniformity and noise, together with a low computational time. sion on these experiments MRF agent-based approach appears to be a very promising new tool for complex image segmentation.
Keywords :
Distributed expectation maximization , Multiagents system , Markov random field , Magnetic resonance brain scan segmentation , MEDICAL IMAGING
Journal title :
Artificial Intelligence In Medicine
Serial Year :
2009
Journal title :
Artificial Intelligence In Medicine
Record number :
1836782
Link To Document :
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