Abstract
We propose a method for learning models of people's motion behaviors in an
indoor environment. As people move through their environments, they do
not move randomly. Instead, they often engage in typical motion patterns,
related to specific locations that they might be interested in approaching
and specific trajectories that they might follow in doing so. Knowledge
about such patterns may enable a mobile robot to develop improved people
following and obstacle avoidance skills. This paper proposes an algorithm
that learns collections of typical trajectories that characterize a
person's motion patterns. Data, recorded by mobile robots equipped with
laser range finders, is clustered into different types of motion using
the popular expectation maximization algorithm, while simultaneously
learning multiple motion patterns. Experimental results, obtained using
data collected in a domestic residence and in an office building,
illustrate that highly predictive models of human motion patterns can be
learned.
This is joint work with Maren Bennewitz and Sebastian Thrun |
Charles Rosenberg Last modified: Mon Apr 1 13:51:48 EST 2002