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DeepHeart: A Deep Learning Approach for Accurate Heart Rate Estimation from PPG Signals

机译:Deepheart:PPG信号精确心率估计的深度学习方法

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摘要

Heart rate (HR) estimation based on photoplethysmography (PPG) signals has been widely adopted in wrist-worn devices. However, the motion artifacts caused by the user's physical activities make it difficult to get the accurate HR estimation from contaminated PPG signals. Although many signal processing methods have been proposed to address this challenge, they are often highly optimized for specific scenarios, making them impractical in real-world settings where a user may perform a wide range of physical activities. In this article, we propose Deep! Ieart, a new I IR estimation approach that features deep-learning-based denoising and spectrum-analysis-based calibration. DeepHeart generates clean PPG signals from electrocardiogram signals based on a training data set. Then a set of denoising convolutional neural networks (DCNNs) are trained with the contaminated PPG signals and their corresponding clean PPG signals. Contaminated PPG signals are then denoised by an ensemble of DCNNs and a spectrum-analysis-based calibration is performed to estimate the final HR. We evaluate DeepHeart on the IEEE Signal Processing Cup training data set with 12 records collected during various physical activities. DeepHeart achieves an average absolute error of 1.61 beats per minute (bpm), outperforming a state-of-the-art deep learning approach (4 bpm) and a classical signal processing approach (2.34 bpm).
机译:基于光电电机描绘(PPG)信号的心率(HR)估计已广泛采用手腕磨损器件。然而,由用户的物理活动引起的运动伪像使得难以从受污染的PPG信号获得准确的HR估计。虽然已经提出了许多信号处理方法来解决这一挑战,但它们通常对特定场景进行高度优化,使得在用户可以执行广泛的体育活动的现实世界中,使它们不切实际。在本文中,我们建议深! ieart,一种新的I IR估计方法,具有基于深度学习的去噪和基于频谱分析的校准。 Deepheart基于训练数据集产生来自心电图信号的清洁PPG信号。然后用污染的PPG信号和它们相应的清洁PPG信号训练一组去噪卷积神经网络(DCNN)。然后,通过DCNN的集合进行污染的PPG信号,并进行频谱分析的校准以估计最终的HR。我们在IEEE信号处理杯训练数据上评估Deepheart,在各种体力活动期间收集的12条记录。 Deepheart实现了每分钟1.61节拍的平均绝对误差(BPM),优于最先进的深度学习方法(4bpm)和经典信号处理方法(2.34 bpm)。

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