实时呼吸相位检测使用耳塞麦克风

Zihan Wang, Tousif Ahmed, Md. Mahbubur Rahman, M. Y. Ahmed, Ebrahim Nemati, Jilong Kuang, A. Gao
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引用次数: 2

摘要

在医院外跟踪呼吸阶段(吸气和呼气)可以提供重要的健康和保健益处。例如,呼吸阶段可以为呼吸练习提供细粒度的呼吸信息。虽然以前的工作使用智能手机和智能手表来跟踪呼吸阶段,但在这项工作中,我们使用耳塞进行呼吸阶段检测,这对于呼吸练习来说是一个更好的形式因素,因为它需要用户较少的注意力。我们提出了一种基于卷积神经网络的算法,用于在引导呼吸过程中使用耳塞捕获的音频来检测呼吸阶段。我们在实验室和家庭环境中对30名参与者进行了用户研究,以开发和评估我们的算法。该算法仅采集500ms音频信号,检测呼吸相位的准确率为85%。我们的工作证明了使用耳塞实时跟踪呼吸阶段的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Breathing Phase Detection Using Earbuds Microphone
Tracking breathing phases (inhale and exhale) outside the hospitals can offer significant health and wellness benefits. For example, the breathing phases can provide fine-grained breathing information for breathing exercises. While previous works use smartphones and smartwatches for tracking breathing phases, in this work, we use earbuds for breathing phase detection, which can be a better form factor for breathing exercises as it requires less user attention from the user. We propose a convolutional neural network-based algorithm for detecting breathing phases using the audio captured through the earbuds during guided breathing sessions. We conducted a user study with 30 participants in both lab and home environments to develop and evaluate our algorithm. Our algorithm can detect the breathing phases with 85% accuracy by taking only a 500ms audio signal. Our work demonstrates the potential of using earbuds for tracking the breathing phases in real-time.
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