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A Power-Efficient Binary-Weight Spiking Neural Network Architecture for Real-Time Object Classification

12 March 2020
Pai-Yu Tan
Po-Yao Chuang
Yen-Ting Lin
Cheng-Wen Wu
Juin-Ming Lu
    MQ
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Abstract

Neural network hardware is considered an essential part of future edge devices. In this paper, we propose a binary-weight spiking neural network (BW-SNN) hardware architecture for low-power real-time object classification on edge platforms. This design stores a full neural network on-chip, and hence requires no off-chip bandwidth. The proposed systolic array maximizes data reuse for a typical convolutional layer. A 5-layer convolutional BW-SNN hardware is implemented in 90nm CMOS. Compared with state-of-the-art designs, the area cost and energy per classification are reduced by 7×\times× and 23×\times×, respectively, while also achieving a higher accuracy on the MNIST benchmark. This is also a pioneering SNN hardware architecture that supports advanced CNN architectures.

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