Thanks to the efforts of the robotics and autonomous systems community,
robots are becoming ever more capable. There is also an increasing demand from
end-users for autonomous service robots that can operate in real environments
for extended periods. In the STRANDS project we are tackling this demand
head-on by integrating state-of-the-art artificial intelligence and robotics
research into mobile service robots, and deploying these systems for long-term
installations in security and care environments. Over four deployments, our
robots have been operational for a combined duration of 104 days autonomously
performing end-user defined tasks, covering 116km in the process. In this
article we describe the approach we have used to enable long-term autonomous
operation in everyday environments, and how our robots are able to use their
long run times to improve their own performance
Abstract-We present a method for introducing representation of dynamics into environment models that were originally tailored to represent static scenes. Rather than using a fixed probability value, the method models the uncertainty of the elementary environment states by probabilistic functions of time. These are composed of combinations of harmonic functions, which are obtained by means of frequency analysis. The use of frequency analysis allows to integrate long-term observations into memoryefficient spatio-temporal models that reflect the mid-to longterm environment dynamics. These frequency-enhanced spatiotemporal models allow to predict the future environment states, which improves the efficiency of mobile robot operation in changing environments. In a series of experiments performed over periods of days to years, we demonstrate that the proposed approach improves localization, path planning and exploration.
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