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, November 2014 and the Ph.D. degree from the University of, 2019.

, she was the recipient of a French Defense DGA/DRET postdoctoral fellowship and was a research associate at Princeton University, the Master degree in June 1997, and the Ph.D. degree from the University of Cergy-Pontoise, 1996.

C. Guillemot and I. , she has been with FRANCE TELECOM, where she has been involved in various projects in the area of image and video coding for TV, HDTV, and multimedia. From January 1990 to mid 1991, she has worked at Bellcore, NJ, USA, as a visiting scientist, INRIA, head of a research team dealing with image and video modeling, processing, coding and communication. She holds a Ph.D. degree from ENST, 1985.