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Incorporating Learnable Membrane Time Constant to Enhance Learning of Spiking Neural Networks

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Spiking Neural Networks (SNNs) have attracted enormous research interest due to temporal information processing capability, low power consumption, and high biological plausibility. However, the formulation of efficient and high-performance learning algorithms for SNNs is still challenging. Most existing learning methods learn weights only, and require manual tuning of the membrane-related parameters that determine the dynamics of a single spiking neuron. These parameters are typically chosen to be the same for all neurons, which limits the diversity of neurons and thus the expressiveness of the resulting SNNs. In this paper, we take inspiration from the observation that membrane-related parameters are different across brain regions, and propose a training algorithm that is capable of learning not only the synaptic weights but also the membrane time constants of SNNs. We show that incorporating learnable membrane time constants can make the network less sensitive to initial values and can speed up learning. In addition, we reevaluate the pooling methods in SNNs and find that max-pooling will not lead to significant information loss and have the advantage of low computation cost and binary compatibility. We evaluate the proposed method for image classification tasks on both traditional static MNIST, Fashion-MNIST, CIFAR-10 datasets, and neuromorphic N-MNIST, CIFAR10-DVS, DVS128 Gesture datasets. The experiment results show that the proposed method outperforms the state-of-the-art accuracy on nearly all datasets, using fewer time-steps. Our codes are available at https://github.com/fangwei123456/Parametric-Leaky-Integrate-and-Fire-Spiking-Neuron.

Wei Fang, Zhaofei Yu, Yanqi Chen, Timothee Masquelier, Tiejun Huang, Yonghong Tian• 2020

Related benchmarks

TaskDatasetResultRank
Image ClassificationCIFAR-10 (test)
Accuracy93.5
3381
Image ClassificationCIFAR10 (test)
Accuracy93.5
585
Action RecognitionSomething-Something v2 (val)
Top-1 Accuracy26.5
535
Image ClassificationCIFAR-10--
507
Image ClassificationMNIST--
395
Action RecognitionUCF101 (test)--
307
Image ClassificationMNIST
Accuracy99.6
263
Image ClassificationFashion MNIST
Accuracy94.38
225
Image ClassificationFashionMNIST (test)
Accuracy93.8
218
ClassificationCIFAR10-DVS
Accuracy74.8
133
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