was limited to 0.3 m/s, which is the normal operation speed for this kind of robot in such
an environment. The second and third columns show respectively the total length of the
path and the total execution time. The fourth column shows the time elapsed during
seek actions (so when the robot is not moving), and the fifth column average speed of
the robot while it was moving (excluded seek time).
The performed exeriments have confirmed the effectiveness of the method in such
an environment.
5 Conclusions and Future Work
In this paper we have presented an approach to person following from a mobile robot
equipped with a stereo camera, using automatic apperance model acquisition and stereo
vision based tracking. The implemented system works well in environments with un-
known objects and other moving people, and do not require a priori calibration on the
person to be tracked, using instead an automatic fast training step. The main limitation
of the approach is given by the color based model, that fails to correctly detect a person
when there are other objects or people using similar colors. As future work, we intend
to perform more extensive experiments to compare and evaluate different color based
appearance models that can be used for this task.
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