Detecting User Intention Changes Using the Kullback-Leibler Distance

Demeester, Eric (University of Leuven) | Hüntemann, Alexander (University of Leuven)

AAAI Conferences 

Many people may benefit from assistive robots that understand their users’ intentions and aid them with the execution of these intentions in a safe and intuitive way through shared control. In the past, our research group has worked on semi-autonomous robotic wheelchairs transporting people with mobility challenges. Experimental results with our user-adaptive Bayesian approach for both intention estimation and shared human-machine decision-making under uncertainty have shown that in situations where the driver changes his or her intention, the assistive behavior by the robot may under certain conditions be counter-intuitive as it continues to take actions that are in line with the previous user intention, and this for too long a period of time. To remedy this, this paper proposes an approach to detect such changes in user plans in order to make the robot’s assistive behavior more reactive and thus more intuitive. The approach adopts a test that checks the consistency of the posterior distribution over user intentions with the given steering signals. A proof-of-concept study of this test’s performance is shown.

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