MURI Investigators
Kulkarni, Sanjeev R

Affiliation: Princeton University
Phone: (609) 258-6727, Fax: (609) 258-1560

Research Interests:
statistical pattern recognition, learning theory, nonparametric estimation; signal, image, and video processing; information theory and communications; adaptive systems, hybrid systems, control; econometrics and finance

Sanjeev R. Kulkarni received the B.S. in Mathematics, B.S. in E.E., M.S. in Mathematics from Clarkson University in 1983, 1984, and 1985, respectively, the M.S. degree in E.E. from Stanford University in 1985, and the Ph.D. in E.E. from M.I.T. in 1991. From 1985 to 1991 he was a Member of the Technical Staff at M.I.T. Lincoln Laboratory working on the modeling and processing of laser radar measurements. In the spring of 1986, he was a part-time faculty member at the University of Massachusetts, Boston. Since 1991, he has been with Princeton University where he is currently Associate Professor of Electrical Engineering. He spent January 1996 as a research fellow at the Australian National University. He spent 1998 with Susquehanna International Group and has been a regular consultant there since 1997, working on statistical arbitrage and analysis of firm-wide stock trading. Prof. Kulkarni received an ARO Young Investigator Award in 1992, and an NSF Young Investigator Award in 1994. He has also received several teaching awards at Princeton University, including three awards from the Undergraduate Engineering Council for a Machine Vision course taught in Fall 1991, an Image Processing course taught in Spring 1992, and an Introduction to Electrical Signals and Systems course taught in Fall 1999. He has served as an Associate Editor for the IEEE Transactions on Information Theory. Prof. Kulkarni\'s research interests include statistical pattern recognition, nonparametric estimation, learning and adaptive systems, information theory, image/video processing, econometrics and finance.

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