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MANIPULATION

A Vision-Based Learning Method for Pushing Manipulation

Marcos Salganicoff, Giorgio Metta, Andrea Oddera, Giulio Sandini

Year
1993
Citations
44
Access
Open access

Abstract

A Vision-Based Learning Method for Pushing Manipulation We describe an unsupervised on-line method for learning of manipulative actions that allows a robot to push an object connected to it with a rotational point contact to a desired point in image-space. By observing the results of its actions on the object's orientation in image-space, the system forms a predictive forward empirical model. This acquired model is used on-line for manipulation planning and control as it improves. Rather than explicitly inverting the forward model to achieve trajectory control, a stochastic action selection technique [Moore, 1990] is used to select the most informative and promising actions, thereby integrating active perception and learning by combining on-line improvement, task-directed exploration, and model exploitation. Simulation and experimental results of the approach are presented. Comments

Keywords

Computer scienceArtificial intelligenceComputer visionTactObject (grammar)Task (project management)TrajectoryPoint (geometry)Orientation (vector space)Action (physics)

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