A new algorithm can change and simplify the way you find
photos among the billions of snaps on social media sites such as
Facebook and Flickr.
The search tool developed
by Parham Aarabi from the University of Toronto and his former student
Ron Appel, uses tag locations to quantify relationships between
individuals, even those not tagged in any given photo.
Imagine
you and your mother are pictured together, building a sandcastle at the
beach. You're both tagged in the photo quite close together,
researchers said.
In the next photo, you and
your father are eating watermelon. You're both tagged. Because of your
close 'tagging' relationship with both your mother in the first picture
and your father in the second, the algorithm can determine that a
relationship exists between those two and quantify how strong it may be,
they said.
In a third photo, you fly a kite
with both parents, but only your mother is tagged. Given the strength of
your 'tagging' relationship with your parents, when you search for
photos of your father the algorithm can return the untagged photo
because of the very high likelihood he's pictured.
"Two things are happening: we understand relationships, and we can search images better," said Aarabi.
The
nimble algorithm, called relational social image search, achieves high
reliability without using computationally intensive object - or
facial-recognition software.
"If you want to
search a trillion photos, normally that takes at least a trillion
operations. It's based on the number of photos you have," said Aarabi.
"Facebook
has almost half a trillion photos, but a billion users - it's almost a
500 order of magnitude difference. Our algorithm is simply based on the
number of tags, not on the number of photos, which makes it more
efficient to search than standard approaches," said Aarabi.
Work
on this project began in 2005 in Aarabi's Mobile Applications Lab,
Canada's first lab space for mobile application development.
Currently
the algorithm's interface is primarily for research, but Aarabi aims to
see it incorporated on the back-end of large image databases or social
networks.
"I envision the interface would be
exactly like you use Facebook search--for users, nothing would change.
They would just get better results," said Aarabi.
While testing the algorithm, Aarabi and Appel discovered an unforeseen application: a new way to generate maps.
They
tagged a few photographs of buildings around the university campus and
ran them through the system with a bunch of untagged campus photos.
"The
result we got was of almost a pseudo-map of the campus from all these
photos we had taken, which was very interesting," said Aarabi.
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