入耳式语音:用于入耳式传感平台的骨传导麦克风的毫瓦音频增强

Philipp Schilk, Niccolò Polvani, Andrea Ronco, M. Cernak, M. Magno
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引用次数: 2

摘要

最近远程会议的普遍采用伴随着无处不在的对扭曲或不清晰的语音通信的沮丧。音频增强可以通过应用噪声抑制技术来补偿来自小的真正无线耳塞的低质量输入信号。这种处理依赖于低延迟的语音活动检测(VAD)和附加的区分佩戴者声音的能力,这是一项计算复杂度很高的任务。然而,像现代耳机这样小的设备的紧张能源预算要求任何试图解决这个问题的系统都要以最小的功率和处理开销来解决这个问题,同时由于可用性问题而不依赖于扬声器特定的语音样本和训练。本文介绍了一种基于新型商用MEMS骨传导传声器的低功耗无线耳塞定制研究平台的设计和实现。这种麦克风可以以更高的隔离度记录佩戴者的语音,从而实现个性化的语音活动检测和进一步的音频增强应用。此外,本文准确评估了一种基于骨传导数据和循环神经网络的低功耗个性化语音检测算法,该算法在所实现的研究平台上运行。将该算法与基于传统麦克风输入的方法进行了比较。评估了骨传导系统的性能,在12.8ms内实现了语音检测,准确率为95%。不同的SoC选择进行了对比,最终基于尖端的Ambiq Apollo 4 Blue SoC实现了2.64mW的平均功耗,每推理14uJ,在微型32mAh锂离子电池上达到43h的电池寿命,无占空循环。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
In-Ear-Voice: Towards Milli-Watt Audio Enhancement With Bone-Conduction Microphones for In-Ear Sensing Platforms
The recent ubiquitous adoption of remote conferencing has been accompanied by omnipresent frustration with distorted or otherwise unclear voice communication. Audio enhancement can compensate for low-quality input signals from, for example, small true wireless earbuds, by applying noise suppression techniques. Such processing relies on voice activity detection (VAD) with low latency and the added capability of discriminating the wearer’s voice from others - a task of significant computational complexity. The tight energy budget of devices as small as modern earphones, however, requires any system attempting to tackle this problem to do so with minimal power and processing overhead, while not relying on speaker-specific voice samples and training due to usability concerns. This paper presents the design and implementation of a custom research platform for low-power wireless earbuds based on novel, commercial, MEMS bone-conduction microphones. Such microphones can record the wearer’s speech with much greater isolation, enabling personalized voice activity detection and further audio enhancement applications. Furthermore, the paper accurately evaluates a proposed low-power personalized speech detection algorithm based on bone conduction data and a recurrent neural network running on the implemented research platform. This algorithm is compared to an approach based on traditional microphone input. The performance of the bone conduction system, achieving detection of speech within 12.8ms at an accuracy of 95% is evaluated. Different SoC choices are contrasted, with the final implementation based on the cutting-edge Ambiq Apollo 4 Blue SoC achieving 2.64mW average power consumption at 14uJ per inference, reaching 43h of battery life on a miniature 32mAh li-ion cell and without duty cycling.
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