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degrees in biomedical engineering from First Military Medical University, China he has been a Faculty Member with the His recent work concentrates on the medical image reconstruction, image analysis, pattern recognition, 2007. ,
Coatrieux received the Ph.D. and State Doctorate degrees in sciences from the University of Rennes 1 He is now a professor of the His recent work concentrates on image analysis, pattern recognition, and fast algorithms of digital signal processing, 1973. ,