A supervised approach to segment multiple sclerosis lesions using context - rich features and a boosting classifier
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چکیده
msj.sagepub.com Multiple Sclerosis Journal 2012; 18: (S4) 55–277 P398 A supervised approach to segment multiple sclerosis lesions using context-rich features and a boosting classifier M. Cabezas, A. Oliver, X. Lladó, Y. Díez, J. Freixenet, J.C. Vilanova, A. Quiles, G. Laguillo, L. Ramió-Torrentà, D. Pareto, A. Rovira University of Girona (Girona, ES); Girona Magnetic Resonance Center (Girona, ES); Dr. Josep Trueta University Hospital (Girona, ES); Vall d’Hebron University Hospital (Barcelona, ES)
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تاریخ انتشار 2012