嵌入式设备上的高效内存关键字定位应用的动态确定性二进制滤波器

J. Fernández-Marqués, V. W. Tseng, S. Bhattacharya, N. Lane
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引用次数: 8

摘要

轻量级关键字识别(KWS)应用程序通常用于触发更复杂的语音识别算法的执行,这些算法的计算要求很高,因此不能在设备上持续运行。通常,KWS应用程序在具有非常有限的内存(例如128kB)和计算能力(例如80MHz的CPU)的小型微控制器中执行,限制了可部署KWS系统的复杂性。我们提出了一种紧凑的二进制架构,与目前的KWS应用程序相比,在推理过程中参数减少了60%,操作(OP)减少了50%,但精度下降了3.4%。它利用二进制正交代码来分析语音命令的语音特征,从而产生一个内存占用最小且计算成本低廉的模型,使其能够部署在资源非常有限的微控制器中,其片上内存少于30kB。我们的技术为神经网络中的过滤器如何在推理时构建提供了不同的视角,而不是直接从磁盘加载它们。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On-the-fly deterministic binary filters for memory efficient keyword spotting applications on embedded devices
Lightweight keyword spotting (KWS) applications are often used to trigger the execution of more complex speech recognition algorithms that are computationally demanding and therefore cannot be constantly running on the device. Often KWS applications are executed in small microcontrollers with very constrained memory (e.g. 128kB) and compute capabilities (e.g. CPU at 80MHz) limiting the complexity of deployable KWS systems. We present a compact binary architecture with 60% fewer parameters and 50% fewer operations (OP) during inference compared to the current state of the art for KWS applications at the cost of 3.4% accuracy drop. It makes use of binary orthogonal codes to analyse speech features from a voice command resulting in a model with minimal memory footprint and computationally cheap, making possible its deployment in very resource-constrained microcontrollers with less than 30kB of on-chip memory. Our technique offers a different perspective to how filters in neural networks could be constructed at inference time instead of directly loading them from disk.
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