Heal-T: An Efficient Ppg-Based Heart-Rate And Ibi Estimation Method During Physical Exercise

2016 24th European Signal Processing Conference (EUSIPCO)(2016)

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摘要
Photoplethysmography (PPG) is a simple, unobtrusive and low-cost technique for measuring blood volume pulse (BVP) used in heart-rate (HR) estimation. However, PPG based heart-rate monitoring devices are often affected by motion artifacts in on-the-go scenarios, and can yield a noisy BVP signal reporting erroneous HR values. Recent studies have proposed spectral decomposition techniques (e.g. M-FOCUSS, Joint-Sparse-Spectrum) to reduce motion artifacts and increase HR estimation accuracy, but at the cost of high computational load. The singular-value-decomposition and recursive calculations present in these approaches are not feasible for the implementation in real-time continuous-monitoring scenarios. In this paper, we propose an efficient HR estimation method based on a combination of fast-ICA, RLS and BHW filter stages that avoids sparse signal reconstruction, while maintaining a high HR estimation accuracy. The proposed method outperforms the state-of-the-art systems on the publicly available TROIKA data set both in terms of HR estimation accuracy ( absolute error of 2.25 +/- 1.93 bpm) and computational load.
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关键词
sparse signal reconstruction avoidance,BHW filter,RLS,fast-ICA,HR estimation method,real-time continuous-monitoring scenarios,recursive calculations,singular value decomposition,motion artifact reduction,spectral decomposition technique,on-the-go scenario,PPG based heart-rate monitoring device,BVP measurement,blood volume pulse measurement,photoplethysmography,physical exercise,PPG-based heart-rate estimation method,IBI estimation method,HEAL-T
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