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, Jocelyn Chanussot (M'04-SM'04-F'12) received the M.Sc. degree in electrical engineering from the Grenoble Institute of Technology

F. Grenoble, He holds the AXA chair in remote sensing and is an Adjunct professor at the Chinese Academy of Sciences, Aerospace Information research Institute, Beijing. Dr. Chanussot is the founding President of IEEE Geoscience and Remote Sensing French chapter, He is an Associate Editor for the IEEE Transactions on Geoscience and Remote Sensing, the IEEE Transactions on Image Processing and the Proceedings of the IEEE. He was the Editor-in-Chief of the IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, pp.2018-2019, 1998.

, She received her Ph.D. in Applied Math from the University of California Los Angeles (UCLA) in 2010. After graduation, she was a postdoctoral fellow at the School of Electrical and Computer Engineering Georgia Institute of Technology, followed by another postdoc training at the Department of Mathematics, University of California Irvine from 2012-2014. Dr. Lou received the National Science Foundation CAREER Award in 2019. Her research interests include compressive sensing and its applications, image analysis (medical imaging, hyperspectral, 2014.

A. L. Bertozzi-;-received-the, B. A. , M. A. , and P. D. , she was appointed the Betsy Wood Knapp Chair of Innovation and Creativity. Her research interests include graphical models for machine learning, image inpainting, image segmentation, cooperative control of robotic vehicles, swarming, and fluid interfaces, and crime modeling, She was a recipient of the SIAM Kovalevsky Prize in 2009 and the SIAM Kleinman Prize in 2019. She is a member of the US National Academy of Sciences and a Fellow of the American Academy of Arts and Sciences. She has served as a Plenary/Distinguished Lecturer for both SIAM and AMS and has served as Associate Editor of the SIAM journals on Multiscale Modelling and Simulation, 1987.