DocumentCode
3709241
Title
Facilitating intention prediction for humans by optimizing robot motions
Author
Freek Stulp;Jonathan Grizou;Baptiste Busch;Manuel Lopes
Author_Institution
Flowers Team, a joint lab between INRIA and ENSTA-Paristech (Unité
fYear
2015
Firstpage
1249
Lastpage
1255
Abstract
Members of a team are able to coordinate their actions by anticipating the intentions of others. Achieving such implicit coordination between humans and robots requires humans to be able to quickly and robustly predict the robot´s intentions, i.e. the robot should demonstrate a behavior that is legible. Whereas previous work has sought to explicitly optimize the legibility of behavior, we investigate legibility as a property that arises automatically from general requirements on the efficiency and robustness of joint human-robot task completion. We do so by optimizing fast and successful completion of joint human-robot tasks through policy improvement with stochastic optimization. Two experiments with human subjects show that robots are able to adapt their behavior so that humans become better at predicting the robot´s intentions early on, which leads to faster and more robust overall task completion.
Keywords
"Robot kinematics","Trajectory","Cost function","Service robots","Learning (artificial intelligence)"
Publisher
ieee
Conference_Titel
Intelligent Robots and Systems (IROS), 2015 IEEE/RSJ International Conference on
Type
conf
DOI
10.1109/IROS.2015.7353529
Filename
7353529
Link To Document