Sciweavers

ICRA
2000
IEEE

A General Learning Approach to Multisensor Based Control using Statistic Indices

13 years 9 months ago
A General Learning Approach to Multisensor Based Control using Statistic Indices
We propose a concept for integrating multiple sensors in real-time robot control. To increase the controller robustness under diverse uncertainties, the robot systematically generates series of sensor data (as robot state) while memorising the corresponding motion parameters. From the collection of (multi-) sensor trajectories, statistical indices like principal components for each sensor type can be extracted. If the sensor data are preselected as output relevant, these principal components can be used very efficiently to approximately represent the original perception scenarios. After this dimension reduction procedure, a non-linear fuzzy controller, e.g. a B-spline type, can be trained to map the subspace projection into the robot control parameters. We apply the approach to a real robot system with two arms and multiple vision and force/torque sensors. These external sensors are used simultaneously to control the robot arm performing insertion and screwing operations. The success...
Yorck von Collani, Markus Ferch, Jianwei Zhang, Al
Added 31 Jul 2010
Updated 31 Jul 2010
Type Conference
Year 2000
Where ICRA
Authors Yorck von Collani, Markus Ferch, Jianwei Zhang, Alois Knoll
Comments (0)