Improving latency performance trade-off in keyword spotting applications at the edge

F. Paissan, Anisha Mohamed Sahabdeen, Alberto Ancilotto, Elisabetta Farella
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引用次数: 1

Abstract

Keyword Spotting (KWS) is handy in many innovative ambient intelligence applications, such as smart cities and home automation. While solving KWS on GP/GPUs has become a trivial task in recent years, many benefits arise when KWS applications run at the edge (e.g., privacy by design and infrastructure sustainability), where resources are limited. Hardware-aware scaling (HAS) is a novel paradigm that brings neural architectures to low-resource platforms. With HAS, it is possible to optimize neural architectures to fit on embedded platforms (e.g., microcontrollers) while maximizing the performance-complexity tradeoff and the performance-latency tradeoff. This paper shows how HAS, coupled with a neural network with appropriate scaling capabilities, can outperform architectures designed with neural architecture search techniques, such as MCUNet. Our method achieves 94.5% accuracy when classifying the 35 keywords in Google Speech Commands v2, with only 70 ms of latency and overall power consumption of less than 10 mJ.
改善边缘关键字定位应用程序的延迟性能权衡
关键字定位(KWS)在许多创新的环境智能应用中都很方便,例如智能城市和家庭自动化。虽然近年来在GP/ gpu上解决KWS问题已经成为一项微不足道的任务,但当KWS应用程序在资源有限的边缘运行时(例如,设计隐私和基础设施可持续性)会产生许多好处。硬件感知扩展(HAS)是一种将神经架构引入低资源平台的新范式。使用HAS,可以优化神经架构以适应嵌入式平台(例如微控制器),同时最大化性能复杂性权衡和性能延迟权衡。本文展示了如何将HAS与具有适当扩展能力的神经网络相结合,从而优于使用神经架构搜索技术(如MCUNet)设计的架构。我们的方法在对Google Speech Commands v2中的35个关键词进行分类时,准确率达到94.5%,延迟仅为70 ms,总功耗小于10 mJ。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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