Signal Processing - January 2017 - 115
are a mixed breed of statisticians
crossed with control theorists crossed
with computer engineers who have,
over the decades, folded performance
assurance into their algorithms to
ensure that video looks good after
compressed, targets are accurately
tracked, and tumors can be effectively
classified with low rates of false alarm
and missed detections.
Hence, as this new era of big data and
data science unfolds, let us issue a challenge to scientists, engineers, and signal
processors to establish new forms of collaboration: To the data scientists, reach
out and ask a signal processor whether
they know of any signal processing tools
that might work on your data. To the signal processor, find the scientists and
ApplicAtions corner
engineers who are making the next wave
of data and offer your services. Now
more than ever is the time for those
engaged in signal processing to reach
across the boundaries of technical fields
and contribute their tools to the analysis
of the vast amounts of data that are being
generated everywhere. Signal processing
has had a fantastic record of success, and,
as we move to this new world of data
treasure hunting, signal processing can
ensure the success of data science-
ensuring that the hidden correlations one
finds are truly golden treasures and not
spurious pyrite counterfeits.
Author
Wade Trappe (trappe@winlab.rutgers
.edu) is a professor in the Electrical and
Computer Engineering Department at
Rutgers University, New Jersey, and
associate director of the Wireless
Information Network Laboratory
(WINLAB), where he directs
WINLAB's research in wireless security.
He coauthored the textbook Introduction
to Cryptography with Coding Theory as
well as several monographs on wireless
security, including Securing Wireless
Communications at the Physical Layer
and Securing Emerging Wireless
Systems: Lower-Layer Approaches. He
was an editor of IEEE Transactions on
Information Forensics and Security,
IEEE Signal Processing Magazine, and
IEEE Transactions on Mobile
Computing. He is an IEEE Fellow.
sp
(continued from page 109)
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Table of Contents for the Digital Edition of Signal Processing - January 2017
Signal Processing - January 2017 - Cover1
Signal Processing - January 2017 - Cover2
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