Engineering and Technology
Learning inverse kinematics using neural computational primitives on neuromorphic hardware
J. Zhao, M. Monforte, et al.
This research showcases a groundbreaking online motor control system powered by a hardware spiking neural network (SNN). Conducted by Jingyue Zhao, Marco Monforte, Giacomo Indiveri, Chiara Bartolozzi, and Elisa Donati, the SNN achieves an impressive 97.93% accuracy in learning the inverse kinematics of a robotic arm, paving the way for neuromorphic computing in real-world applications.
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