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A 3.8-μW 10-Keyword Noise-Robust Keyword Spotting Processor Using Symmetric Compressed Ternary-Weight Neural Networks

Authors :
Bo Liu
Na Xie
Renyuan Zhang
Haichuan Yang
Ziyu Wang
Deliang Fan
Zhen Wang
Weiqiang Liu
Hao Cai
Source :
IEEE Open Journal of the Solid-State Circuits Society, Vol 3, Pp 185-196 (2023)
Publication Year :
2023
Publisher :
IEEE, 2023.

Abstract

A ternary-weight neural network (TWN) inspired keyword spotting (KWS) processor is proposed to support complicated and variable application scenarios. To achieve high-precision recognition of ten keywords under 5 dB~Clean wide range of background noises, a convolution neural network consists of four convolution layers and four fully connected layers, with modified sparsity-controllable truncated Gaussian approximation-based ternary-weight training is used. End-to-end optimization composed of three techniques is utilized: 1) the stage-by-stage bit-width selection algorithm to optimize the hardware overhead of FFT; 2) the lossy compressed TWN with symmetric kernel training (SKT) and dedicated internal data reuse computation flow; and 3) the error intercompensation approximate addition tree to reduce the computation overhead with marginal accuracy loss. Fabricated in an industrial 22-nm CMOS process, the processor realizes up to ten keywords in real-time recognition under 11 background noise types, with the accuracy of 90.6%@clean and 85.4%@5 dB. It consumes an average power of $3.8 ~\mu \text{W}$ at 250 kHz and the normalized energy efficiency is $2.79\times $ higher than state of the art.

Details

Language :
English
ISSN :
26441349
Volume :
3
Database :
Directory of Open Access Journals
Journal :
IEEE Open Journal of the Solid-State Circuits Society
Publication Type :
Academic Journal
Accession number :
edsdoj.5186abb531b541de9572d5c0668700e1
Document Type :
article
Full Text :
https://doi.org/10.1109/OJSSCS.2023.3312354