MANIPULATION
A Divide-and-Conquer Learning Architecture for Predicting Unknown Motion
Patrice Wira, Jean-Philippe Urban, J. Gresser
- Year
- 2001
- Citations
- 3
Abstract
Abstract. Time varying environments or model selection problems lead to crucial dilemmas in identification and control science. In this paper, we propose a modular prediction scheme consisting in a mixture of expert architecture. Several Kalman filters are forced to adapt their dynamics and parameters to different parts of the whole dynamics of the system. The performances of this modular learning scheme are evaluated on a visual servoing problem: motion prediction of an object in a 3-D space for pursuing it with a 3 degree-of-freedom robot manipulator. 1
Keywords
Computer scienceWorkspaceVisual servoingDivide and conquer algorithmsArtificial intelligenceModular designController (irrigation)Kalman filterRobotTrajectory
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