Signal Processing - September 2016 - 94
Cameras and Displays (2015) and Analysis and Modeling of
Faces and Gestures (2010).
Pavan Turaga (pturaga@asu.edu) is an assistant professor in
the School of Arts, Media, Engineering, and Electrical
Engineering at Arizona State University. He received his B.Tech.
degree from the Indian Institute of Technology Guwahati, India,
in 2004 and his M.S. and Ph.D. degrees in electrical engineering
from the University of Maryland, College Park, in 2008 and
2009, respectively. His research interests are in computer vision
and computational imaging with a focus on non-Euclidean and
high-dimensional statistical techniques for these applications. He
was awarded the Distinguished Dissertation Fellowship in 2009
and received the National Science Foundation CAREER Award
in 2015. He is a Senior Member of the IEEE.
Matthew A. Herman (matthew.herman@inviewcorp.com) is
a senior algorithm engineer at InView Technology Corporation.
He received his Ph.D. degree in applied math in 2009 from the
University of California, Davis, with a focus on applications of
compressive sensing, such as radar and model mismatches of the
sensing/system matrix. His work on compressive sensing radar
won the 2013 Best Paper Award from the IEEE Signal Processing
Society. From 2009 to 2011, he was a postdoctoral research fellow at the University of California, Los Angeles. Since starting at
InView in 2011, he has worked on a variety of novel compressive
sensing acquisition and reconstruction algorithms.
Kevin F. Kelly (kkelly@rice.edu) is currently an associate
professor in the Electrical and Computer Engineering
Department and the chair of the Applied Physics Program at Rice
University. He received his B.S. degree in engineering physics
from the Colorado School of Mines in 1993 and his Ph.D. degree
in applied physics from Rice University in 1999. He was a postdoctoral fellow at the Institute for Materials Research in Sendai,
Japan, and in the Chemistry Department at Penn State University.
His compressive imaging research was selected as one of the top
ten emerging technologies by Technology Review Magazine. He
cofounded the InView Technology Corporation, a company
focused on commercializing compressive imaging.
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SP
IEEE SIgnal ProcESSIng MagazInE
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September 2016
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Table of Contents for the Digital Edition of Signal Processing - September 2016
Signal Processing - September 2016 - Cover1
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Signal Processing - September 2016 - Cover3
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