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11:25:00 AM
valgeo
Despite huge advances in technology like GPS, finding your way
through crowded shopping malls and train stations isn’t really any
easier than it was five years ago. Companies like Google and Broadcom
are working on the problem, but there still isn’t a universal solution
that provides the kind of accuracy needed for indoor localization to
really be useful. Well, Duke University researcher Romit Roy Choudhury
is working on an application called UnLoc (for "unsupervized
localization") that uses recursion, filtering, and "invisible landmarks"
to work out your indoor location down to 1.6 meters (about 63 inches) —
and the accuracy is improving.
Invisible landmarks are things like 3G and Wi-Fi dead zones, and
motion signatures from elevators or stairwells, and UnLoc uses them much
in much the same way humans do — as points of reference. Your current
position is estimated using a filtering algorithm that figures out where
you "should" be based on readings from your phone’s sensors, and then
updates its estimate as you run into new landmarks. As He Wang, the
project’s lead Ph.D. student points out, "the best part of the
application is that it is recursive, which means that it starts with
zero knowledge but ‘learns’ over time."
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