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Conditioned behavior in a robot controlled by a spiking neural network

Lovísa Irpa Helgadóttir, Joachim Haenicke, Tim Landgraf, Raúl Rojas, Martin Paul Nawrot

Year
2013
Citations
31

Abstract

Insects show a rich repertoire of goal-directed and adaptive behaviors that are still beyond the capabilities of today's artificial systems. Fast progress in our comprehension of the underlying neural computations make the insect a favorable model system for neurally inspired computing paradigms in autonomous robots. Here, we present a robotic platform designed for implementing and testing spiking neural network control architectures. We demonstrate a neuromorphic realtime approach to sensory processing, reward-based associative plasticity and behavioral control. This is inspired by the biological mechanisms underlying rapid associative learning and the formation of distributed memories in the insect.

Keywords

Neuromorphic engineeringComputer scienceSpiking neural networkArtificial neural networkArtificial intelligenceAssociative learningRobotContent-addressable memoryAdaptive behaviorAssociative property

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