一种用于22nm FDSOI关键字提取的低功耗硬件加速器

Liyuan Guo, M. Jobst, J. Partzsch, Stefan Scholze, Andreas Dixius, Matthias Lohrmann, S. Zeinolabedin, C. Mayr
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引用次数: 0

摘要

随着人工智能的发展,声信号的实时特征提取在关键字识别、语音识别等应用中有着广泛的应用需求。基于Mel-frequency倒谱系数(MFCCs)的特征提取是其中最重要的方法之一。MFCC提取的软件实现导致相对较高的功耗和计算时间限制,通常使其不适合小型电池供电设备。因此,芯片上的MFCC提取加速器在尖端场景中很有意义。提出了一种基于22nm FDSOI技术的MFCC特征提取定点低功耗硬件加速器。时钟频率为1MHz时,1024采样帧的平均功耗为2.78µW。对于关键字识别,量化加速器与不同的分类网络一起工作,平均准确率达到96%左右。
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A Low-Power Hardware Accelerator of MFCC Extraction for Keyword Spotting in 22nm FDSOI
With the development of artificial intelligence, the real-time feature extraction of acoustic signals is required in a wide variety of applications, such as keyword spotting and speech recognition. Feature extraction based on Mel-frequency cepstral coefficients (MFCCs) is one of the most significant methods thereinto. A software implementation of the MFCC extraction results in relatively high power consumption and computational time limitation, often making it unsuitable for tiny battery powered devices. Therefore, an on-chip accelerator of MFCC extraction is of interest in cutting-edge scenarios. This paper presents a fixed-point low-power hardware accelerator of MFCC feature extraction implemented in 22nm FDSOI technology. It consumes an average power of 2.78µW for 1024-sample frame at a clock frequency of 1MHz. For keyword spotting, the quantized accelerator achieves an average accuracy of around 96% working along with different classification networks.
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