Maren Bennewitz, Felix Faber, Dominik Joho, Michael Schreiber, Sven Behnke
Multimodal Conversation between a Humanoid Robot and Multiple Persons
Abstract.
Attracting people and involving multiple persons into an interaction is an
essential capability for a humanoid robot. A prerequisite for such a behavior is that
the robot is able to sense people in its vicinity and to know where they are located.
In this paper, we propose an approach that maintains a probabilistic belief about
people in the surroundings of the robot. Using this belief, the robot is able to
memorize people even if they are currently outside its limited field of view. Furthermore,
we use a technique to localize a speaker in the environment. In this way, even people
who are currently not the primary conversational partners or who are not stored in the
robot's belief can attract its attention. To enrich human-robot interaction and to
express how the robot changes its mood, we apply a technique to change its facial
expressions. As we demonstrate in practical experiments, by integrating the presented
techniques into its control architecture, our robot is able to interact with multiple
persons in a multimodal way and to shift its attention between different people.
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BibTeX
@InProceedings{bennewitz05aaai, author = {Maren Bennewitz and Felix Faber and Dominik Joho and Michael Schreiber and Sven Behnke}, title = {Multimodal Conversation between a Humanoid Robot and Multiple Persons}, year = {2005}, booktitle = {Proceedings of the Workshop on Modular Construction of Humanlike Intelligence at the Twentieth National Conference on Artificial Intelligence {(AAAI)}}, address = {Pittsburgh, USA} }