This paper presents a method for estimating geographic
location for sequences of time-stamped photographs. A
prior distribution over travel describes the likelihood of
traveling from one location to another during a given time
interval. This distribution is based on a training database of
6 million photographs from Flickr.com. An image likelihood
for each location is defined by matching a test photograph
against the training database. Inferring location for images
in a test sequence is then performed using the Forward-
Backward algorithm, and the model can be adapted to individual
users as well. Using temporal constraints allows
our method to geolocate images without recognizable landmarks,
and images with no geographic cues whatsoever.
This method achieves a substantial performance improvement
over the best-available baseline, and geolocates some
users’ images with near-perfect accuracy.