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S. Velasco-forero-received-a, B. Sc, and M. Sc, During the period 2013-2014, he pursued research on multivariate image analysis and processing with the ITWM -Fraunhofer Institute in Kaiserlautern His research interests included image processing, multivariate statistics, computer vision, and mathematical morphology, Mathematics in University of Puerto Rico, and Ph.D. in image processing atÉcoleat´atÉcole des Mines de

A. D. Goh-completed-her-ph and . In, She received her M.S. and B.S.E. in Electrical Engineering from California Institute of Technology and University of Michigan at Ann Arbor, respectively. Currently, she is a researcher at DSO National Laboratories in Singapore and an adjunct assistant professor at the National University of Singapore. Her research interests include speech processing, machine learning, computer vision, and medical imaging, Biomedical Engineering and M.S.E. in Applied Mathematics and Statistics