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J. A. Glaunèsglaun, Glaunès received the MSc degree in Mathematics from ENS Cachan in 2001 and the PhD degree in Mathematics from University Paris-Nord in 2005 Since 2006, he is an assistant professor in the, His research interests are in shape modeling, image deformations and their applications to computational anatomy, 2005.