移动设备中多模态传感器咳嗽事件的自动时间同步

Tousif Ahmed, M. Y. Ahmed, Md. Mahbubur Rahman, Ebrahim Nemati, Bashima Islam, K. Vatanparvar, Viswam Nathan, Daniel McCaffrey, Jilong Kuang, J. Gao
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引用次数: 15

摘要

追踪咳嗽事件的类型和频率对于监测呼吸系统疾病至关重要。咳嗽是COVID-19等呼吸道和传染病最常见的症状之一,在COVID-19等大流行期间,咳嗽监测系统在远程监测中可能至关重要。虽然现有的咳嗽监测解决方案使用单模态(例如,音频)方法来检测咳嗽,但来自多个设备(例如,电话和手表)的多模态传感器(例如,音频和加速度计)的融合可能会发现额外的见解,并有助于跟踪呼吸条件的恶化。然而,这种多模式和多设备融合需要精确的时间同步,这对于咳嗽来说可能是一个挑战,因为咳嗽通常是简洁的事件(0.3-0.7秒)。在本文中,我们首先基于两项研究收集的咳嗽数据,论证了咳嗽同步的时间同步挑战。然后,我们重点介绍了基于互相关的时间同步算法在咳嗽事件对齐方面的性能。我们的算法可以同步98.9%的咳嗽事件,平均同步误差为0.046秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Time Synchronization of Cough Events from Multimodal Sensors in Mobile Devices
Tracking the type and frequency of cough events is critical for monitoring respiratory diseases. Coughs are one of the most common symptoms of respiratory and infectious diseases like COVID-19, and a cough monitoring system could have been vital in remote monitoring during a pandemic like COVID-19. While the existing solutions for cough monitoring use unimodal (e.g., audio) approaches for detecting coughs, a fusion of multimodal sensors (e.g., audio and accelerometer) from multiple devices (e.g., phone and watch) are likely to discover additional insights and can help to track the exacerbation of the respiratory conditions. However, such multimodal and multidevice fusion requires accurate time synchronization, which could be challenging for coughs as coughs are usually concise events (0.3-0.7 seconds). In this paper, we first demonstrate the time synchronization challenges of cough synchronization based on the cough data collected from two studies. Then we highlight the performance of a cross-correlation based time synchronization algorithm on the alignment of cough events. Our algorithm can synchronize 98.9% of cough events with an average synchronization error of 0.046s from two devices.
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