DocumentCode
695122
Title
Inferring guidance information in cooperative human-robot tasks
Author
Berger, Erik ; Vogt, David ; Haji-Ghassemi, Nooshin ; Jung, Bernhard ; Ben Amor, Heni
Author_Institution
Inst. of Comput. Sci., Tech. Univ. Bergakad. Freiberg, Freiberg, Germany
fYear
2013
fDate
15-17 Oct. 2013
Firstpage
124
Lastpage
129
Abstract
In many cooperative tasks between a human and a robotic assistant, the human guides the robot by exerting forces, either through direct physical interaction or indirectly via a jointly manipulated object. These physical forces perturb the robot´s behavior execution and need to be compensated for in order to successfully complete such tasks. Typically, this problem is tackled by means of special purpose force sensors which are, however, not available on many robotic platforms. In contrast, we propose a machine learning approach based on sensor data, such as accelerometer and pressure sensor information. In the training phase, a statistical model of behavior execution is learned that combines Gaussian Process Regression with a novel periodic kernel. During behavior execution, predictions from the statistical model are continuously compared with stability parameters derived from current sensor readings. Differences between predicted and measured values exceeding the variance of the statistical model are interpreted as guidance information and used to adapt the robot´s behavior. Several examples of cooperative tasks between a human and a humanoid NAO robot demonstrate the feasibility of our approach.
Keywords
Gaussian processes; accelerometers; human-robot interaction; humanoid robots; intelligent robots; learning (artificial intelligence); manipulators; pressure sensors; regression analysis; Gaussian process regression; accelerometer; behavior execution; cooperative human-robot tasks; direct physical interaction; force sensors; guidance information; humanoid NAO robot; jointly manipulated object; machine learning approach; periodic kernel; pressure sensor information; robotic assistant; sensor data; statistical model; training phase; Kernel; Legged locomotion; Predictive models; Robot kinematics; Robot sensing systems; Stability analysis;
fLanguage
English
Publisher
ieee
Conference_Titel
Humanoid Robots (Humanoids), 2013 13th IEEE-RAS International Conference on
Conference_Location
Atlanta, GA
ISSN
2164-0572
Print_ISBN
978-1-4799-2617-6
Type
conf
DOI
10.1109/HUMANOIDS.2013.7029966
Filename
7029966
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