Robert Bosch GmbH, Robert-Bosch-Campus 1, 71272 Renningen, Germany.
Bosch Sensortec GmbH, Gerhard-Kindler-Straße 9, 72770 Reutlingen, Germany.
Sensors (Basel). 2019 Jul 12;19(14):3079. doi: 10.3390/s19143079.
Photoplethysmography (PPG)-based continuous heart rate monitoring is essential in a number of domains, e.g., for healthcare or fitness applications. Recently, methods based on time-frequency spectra emerged to address the challenges of motion artefact compensation. However, existing approaches are highly parametrised and optimised for specific scenarios of small, public datasets. We address this fragmentation by contributing research into the robustness and generalisation capabilities of PPG-based heart rate estimation approaches. First, we introduce a novel large-scale dataset (called ), including a wide range of activities performed under close to real-life conditions. Second, we extend a state-of-the-art algorithm, significantly improving its performance on several datasets. Third, we introduce deep learning to this domain, and investigate various convolutional neural network architectures. Our end-to-end learning approach takes the time-frequency spectra of synchronised PPG- and accelerometer-signals as input, and provides the estimated heart rate as output. Finally, we compare the novel deep learning approach to classical methods, performing evaluation on four public datasets. We show that on large datasets the deep learning model significantly outperforms other methods: The mean absolute error could be reduced by 31 % on the new dataset , and by 21 % on the dataset .
基于光电容积脉搏波(PPG)的连续心率监测在许多领域都很重要,例如医疗保健或健身应用。最近,基于时频谱的方法已经出现,以解决运动伪影补偿的挑战。然而,现有的方法高度参数化,并针对小型公共数据集的特定场景进行了优化。我们通过研究基于 PPG 的心率估计方法的稳健性和泛化能力来解决这种碎片化问题。首先,我们引入了一个新的大规模数据集(称为),其中包括在接近实际生活条件下进行的广泛活动。其次,我们扩展了一种最先进的算法,显著提高了其在多个数据集上的性能。第三,我们将深度学习引入到这个领域,并研究了各种卷积神经网络架构。我们的端到端学习方法将同步的 PPG 和加速度计信号的时频谱作为输入,并提供估计的心率作为输出。最后,我们将新的深度学习方法与经典方法进行比较,在四个公共数据集上进行评估。我们表明,在大型数据集上,深度学习模型的性能明显优于其他方法:在新数据集上,平均绝对误差可以降低 31%,在数据集上可以降低 21%。