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
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