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Robot Guidance with Neuromorphic Motion Sensors

Lukas Reichel, David Liechti, Karl Presser, Shih‐Chii Liu

Year
2006
Citations
5

Abstract

Neuromorphic motion sensors are attractive for use on battery powered robots which require a low payload. Their features include low power consumption, continuous computation, light-weight, and robustness to different light and contrast conditions. Their outputs are not compatible with controllers that require precise measurements from their sensors. We describe a preliminary investigation into neural architectures that can translate information from these type of sensors into an output suitable for controlling the motor outputs of a robot. In this work, we use a neural network to produce an output that is similar to the range measurements of infrared range sensors, and we use this output to guide the behavior of the robot in a collision-avoidance task.

Keywords

Neuromorphic engineeringRobotRobustness (evolution)Payload (computing)Computer scienceArtificial intelligenceArtificial neural networkComputer vision

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