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In-Hardware Learning of Multilayer Spiking Neural Networks on a Neuromorphic Processor (2105.03649v1)

Published 8 May 2021 in cs.NE, cs.DC, and cs.ET

Abstract: Although widely used in machine learning, backpropagation cannot directly be applied to SNN training and is not feasible on a neuromorphic processor that emulates biological neuron and synapses. This work presents a spike-based backpropagation algorithm with biological plausible local update rules and adapts it to fit the constraint in a neuromorphic hardware. The algorithm is implemented on Intel Loihi chip enabling low power in-hardware supervised online learning of multilayered SNNs for mobile applications. We test this implementation on MNIST, Fashion-MNIST, CIFAR-10 and MSTAR datasets with promising performance and energy-efficiency, and demonstrate a possibility of incremental online learning with the implementation.

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Authors (5)
  1. Amar Shrestha (6 papers)
  2. Haowen Fang (12 papers)
  3. Daniel Patrick Rider (1 paper)
  4. Zaidao Mei (2 papers)
  5. Qinru Qiu (36 papers)
Citations (23)

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