Collision Avoidance for a Visuo - motor System Using Multiple Self - organizing Maps
نویسندگان
چکیده
Collision avoidance for a visuo-motor system in unstructured and cluttered environment is described. The achievement of collision avoidance is based on a simplified path planning system and motion control performed by self-organizing maps. The self-organizing maps are learned to determine joint angles of a redundant manipulator. Since the learning algorithm promises to make the manipulator reach targets precisely with obstacle-free poses, the path planning system only needs to plan a collision-free path for the end effector of the manipulator in the image spaces. By means of the cooperation of two self-organizing maps, the system solves occlusion problems successfully. Simulation results are presented to demonstrate the effectiveness of the proposed approach.
منابع مشابه
Multiple Self-Organizing Maps for Control of a Redundant Manipulator with Multiple Cameras 331 Multiple Self-Organizing Maps for Control of a Redundant Manipulator with Multiple Cameras
Vision guide for a manipulator has been one of the major research issues in robotics. Coordination schemes of visuo-motor systems can be classified on the basis of the knowledge about manipulator kinematics and camera parameters. Many researchers have proposed a number of systems that deal with unknown manipulator kinematics and unknown camera parameters. In the studies, visuo-motor models are ...
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