Event-driven Pipeline for Low-latency Low-compute Keyword Spotting and Speaker Verification System

Enea Ceolini, Jithendar Anumula, Stefan Braun, Shih-Chii Liu
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引用次数: 12

Abstract

This work presents an event-driven acoustic sensor processing pipeline to power a low-resource voice-activated smart assistant. The pipeline includes four major steps; namely localization, source separation, keyword spotting (KWS) and speaker verification (SV). The pipeline is driven by a front-end binaural spiking silicon cochlea sensor. The timing information carried by the output spikes of the cochlea provide spatial cues for localization and source separation. Spike features are generated with low latencies from the separated source spikes and are used by both KWS and SV which rely on state-of-the-art deep recurrent neural network architectures with a small memory footprint. Evaluation on a self-recorded event dataset based on TIDIGITS shows accuracies of over 93% and 88% on KWS and SV respectively, with minimum system latency of 5 ms on a limited resource device.
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低延迟低计算关键字识别与说话人验证系统的事件驱动管道
这项工作提出了一个事件驱动的声学传感器处理管道,为低资源声控智能助手提供动力。该管道包括四个主要步骤;即定位、源分离、关键词识别(KWS)和说话人验证(SV)。该管道由前端双耳脉冲硅耳蜗传感器驱动。耳蜗输出峰携带的时间信息为定位和分离声源提供了空间线索。尖峰特征由分离源尖峰以低延迟生成,并由KWS和SV使用,它们依赖于具有小内存占用的最先进的深度循环神经网络架构。对基于TIDIGITS的自记录事件数据集的评估显示,在KWS和SV上的准确率分别超过93%和88%,在有限资源设备上的最小系统延迟为5 ms。
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