Title :
Learning action failure models from interactive physics-based simulations
Author :
Andrei Haidu;Daniel Kohlsdorf;Michael Beetz
Author_Institution :
Institute for Artificial Intelligence, Universitä
Abstract :
Predicting the outcome of an action can help a robot detect failures in advance, and schedule action replanning before an error occurs. We propose using an interactive physics based simulator with the aim of collecting realistic data to be used for learning. We then show how we save and query for specific information from the data more effectively. The data from the simulation is used to learn a failure detection model which is utilized by a real robot performing the same actions. We show that learning from simulation data is realistic enough to be applied on a real robot. The learning algorithm is more simple in design and outperforms the more complex one from our previous work.
Keywords :
"Robots","Data models","Physics","Hidden Markov models","Computational modeling","Detectors","Databases"
Conference_Titel :
Intelligent Robots and Systems (IROS), 2015 IEEE/RSJ International Conference on
DOI :
10.1109/IROS.2015.7354136