基于CycleGAN的精确非加速度计PPG运动伪影去除技术

Amir Hosein Afandizadeh Zargari, S. A. H. Aqajari, Hadi Khodabandeh, A. Rahmani, Fadi J. Kurdahi
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引用次数: 14

摘要

光体积描记术(PPG)是一种简单且廉价的光学技术,广泛用于医疗保健领域,以提取有价值的健康相关信息,例如心率变异性、血压和呼吸频率。PPG信号可以使用便携式可穿戴设备轻松地连续和远程收集。然而,这些测量设备容易受到日常生活活动引起的运动伪影的影响。消除运动伪影的最常见方法是使用额外的加速度计传感器,这受到两个限制:(i)高功耗,以及(ii)需要在可穿戴设备中集成加速度计传感器(这在某些可穿戴设备上是不需要的)。本文提出了一种基于低功耗非加速度计的PPG运动伪影去除方法,该方法的精度优于现有方法。我们使用循环生成对抗性网络从噪声PPG信号中重建干净的PPG信号。与不使用加速度计等额外传感器的最先进技术相比,我们新的基于机器学习的技术在去除运动伪影方面实现了9.5倍的改进,从而使能效提高了45%。
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An Accurate Non-accelerometer-based PPG Motion Artifact Removal Technique using CycleGAN
A photoplethysmography (PPG) is an uncomplicated and inexpensive optical technique widely used in the healthcare domain to extract valuable health-related information, e.g., heart rate variability, blood pressure, and respiration rate. PPG signals can easily be collected continuously and remotely using portable wearable devices. However, these measuring devices are vulnerable to motion artifacts caused by daily life activities. The most common ways to eliminate motion artifacts use extra accelerometer sensors, which suffer from two limitations: (i) high power consumption, and (ii) the need to integrate an accelerometer sensor in a wearable device (which is not required in certain wearables). This paper proposes a low-power non-accelerometer-based PPG motion artifacts removal method outperforming the accuracy of the existing methods. We use Cycle Generative Adversarial Network to reconstruct clean PPG signals from noisy PPG signals. Our novel machine-learning-based technique achieves 9.5 times improvement in motion artifact removal compared to the state-of-the-art without using extra sensors such as an accelerometer, which leads to 45% improvement in energy efficiency.
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