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I. Civr, . Icmce, A. Cbmi, . Ipta, and E. Samt, She is now a chair of international relations at College of Sciences and Technologies at University Bordeaux. She obtained her PhD degree in Signals and Systems in Moscou and her Habilitation Diriger la Recherche in Computer Science and Image Processing from University of Nantes France. Her topics of interest include visual content mining, image and video analysis and indexing, artificial intelligence for visual content analysis, healthcare, cultural applications. She is the author and co-author of more than 180 papers in international journals, conference proceedings, book chapters. She is Senior Acciotated Editor JEI SPIE and associated editor of EURASIP Signal Processing: Image Communication, She gave invited lectures at the universities of Sussex (GB), UPC, UAM (Spain), UNAM, 2016.

, Since 2005, he has been an Associate Professor with the University of La Rochelle, Renaud Péteri received the engineering degree in physics and image processing from Telecom Physique Strasbourg, France, the M.S. degree in photonics and image processing from the University of Strasbourg, in 2000, and the Ph.D. degree in image and signal processing from MINES ParisTech, 2003.

. Dr, He was also an invited scholar at the University of California, Péteri was an ERCIM Post-Doctoral fellow at the Hungarian Academy of Sciences in 2004 and at the Mathematics and Computer Science Institute, 2005.