IEEE J Biomed Health Inform. 2018 Nov;22(6):1834-1846. doi: 10.1109/JBHI.2017.2783758. Epub 2017 Dec 14.
This paper describes a novel methodology leveraging particle filters for the application of robust heart rate monitoring in the presence of motion artifacts. Motion is a key source of noise that confounds traditional heart rate estimation algorithms for wearable sensors due to the introduction of spurious artifacts in the signals. In contrast to previous particle filtering approaches, we formulate the heart rate itself as the only state to be estimated, and do not rely on multiple specific signal features. Instead, we design observation mechanisms to leverage the known steady, consistent nature of heart rate variations to meet the objective of continuous monitoring of heart rate using wearable sensors. Furthermore, this independence from specific signal features also allows us to fuse information from multiple sensors and signal modalities to further improve estimation accuracy. The signal processing methods described in this work were tested on real motion artifact affected electrocardiogram and photoplethysmogram data with concurrent accelerometer readings. Results show promising average error rates less than 2 beats/min for data collected during intense running activities. Furthermore, a comparison with contemporary signal processing techniques for the same objective shows how the proposed implementation is also computationally more efficient for comparable performance.
本文提出了一种新颖的方法,利用粒子滤波器在存在运动伪影的情况下实现稳健的心率监测。运动是干扰可穿戴传感器传统心率估计算法的主要噪声源,因为信号中引入了虚假伪影。与之前的粒子滤波方法不同,我们将心率本身作为唯一要估计的状态,而不依赖于多个特定的信号特征。相反,我们设计了观测机制,利用心率变化的已知稳定、一致的性质来实现使用可穿戴传感器连续监测心率的目标。此外,这种不依赖于特定信号特征的方法还允许我们融合来自多个传感器和信号模态的信息,以进一步提高估计精度。本文描述的信号处理方法在真实的运动伪影影响心电图和光电容积脉搏波数据上进行了测试,同时还进行了加速度计读数。结果表明,在激烈的跑步活动中采集的数据的平均误差率低于 2 次/分钟,这是很有前景的。此外,与相同目标的现代信号处理技术进行比较表明,对于可比性能,所提出的实现方法在计算上也更加高效。