Visual Homing in Dynamic Indoor Environments
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Date
2008Author
Szenher, Matthew D
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Abstract
Our dissertation concerns robotic navigation in dynamic indoor environments using
image-based visual homing. Image-based visual homing infers the direction to a
goal location S from the navigator’s current location C using the similarity between
panoramic images IS and IC captured at those locations. There are several ways to
compute this similarity. One of the contributions of our dissertation is to identify a
robust image similarity measure – mutual image information – to use in dynamic indoor
environments. We crafted novel methods to speed the computation of mutual
image information with both parallel and serial processors and demonstrated that these
time-savers had little negative effect on homing success. Image-based visual homing
requires a homing agent tomove so as to optimise themutual image information signal.
As the mutual information signal is corrupted by sensor noise we turned to the stochastic
optimisation literature for appropriate optimisation algorithms. We tested a number
of these algorithms in both simulated and real dynamic laboratory environments and
found that gradient descent (with gradients computed by one-sided differences) works
best.