Title :
How to train your robot - teaching service robots to reproduce human social behavior
Author :
Liu, Peng ; Glas, Dylan F. ; Kanda, Takefumi ; Ishiguro, Hiroshi ; Hagita, Norihiro
Author_Institution :
ATR Intell. Robot. & Commun. Labs., Keihanna, Japan
Abstract :
Developing interactive behaviors for social robots presents a number of challenges. It is difficult to interpret the meaning of the details of people´s behavior, particularly non-verbal behavior like body positioning, but yet a social robot needs to be contingent to such subtle behaviors. It needs to generate utterances and non-verbal behavior with good timing and coordination. The rules for such behavior are often based on implicit knowledge and thus difficult for a designer to describe or program explicitly. We propose to teach such behaviors to a robot with a learning-by-demonstration approach, using recorded human-human interaction data to identify both the behaviors the robot should perform and the social cues it should respond to. In this study, we present a fully unsupervised approach that uses abstraction and clustering to identify behavior elements and joint interaction states, which are used in a variable-length Markov model predictor to generate socially-appropriate behavior commands for a robot. The proposed technique provides encouraging results despite high amounts of sensor noise, especially in speech recognition. We demonstrate our system with a robot in a shopping scenario.
Keywords :
Markov processes; human-robot interaction; learning by example; pattern clustering; service robots; unsupervised learning; abstraction; clustering; human social behavior reproduction; human-human interaction data; learning-by-demonstration approach; robot training; service robot teaching; shopping scenario; socially-appropriate behavior command generation; unsupervised approach; variable-length Markov model predictor; Cameras; Joints; Robot sensing systems; Speech; Speech recognition; Trajectory;
Conference_Titel :
Robot and Human Interactive Communication, 2014 RO-MAN: The 23rd IEEE International Symposium on
Conference_Location :
Edinburgh
Print_ISBN :
978-1-4799-6763-6
DOI :
10.1109/ROMAN.2014.6926377