2015 37th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC) 2015
DOI: 10.1109/embc.2015.7319787
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Unobtrusive heart rate estimation during physical exercise using photoplethysmographic and acceleration data

Abstract: Photoplethysmography (PPG) is a non-invasive, inexpensive and unobtrusive method to achieve heart rate monitoring during physical exercises. Motion artifacts during exercise challenge the heart rate estimation from wrist-type PPG signals. This paper presents a methodology to overcome these limitation by incorporating acceleration information. The proposed algorithm consisted of four stages: (1) A wavelet based denoising, (2) an acceleration based denoising, (3) a frequency based approach to estimate the heart … Show more

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Cited by 16 publications
(11 citation statements)
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“…Very recently, a number of signal processing techniques have been proposed for separating true PPG components from motion artifact components in order to allow PPG-based heart monitoring during physical exercise for the first time. See [3,[5][6][7][8][9][10][11][12] as a small number of example algorithms. with no motion present shows clear peaks for each heart beat, here for a participant with a low resting heart rate of 42 beats per minute.…”
Section: Discussionmentioning
confidence: 99%
“…Very recently, a number of signal processing techniques have been proposed for separating true PPG components from motion artifact components in order to allow PPG-based heart monitoring during physical exercise for the first time. See [3,[5][6][7][8][9][10][11][12] as a small number of example algorithms. with no motion present shows clear peaks for each heart beat, here for a participant with a low resting heart rate of 42 beats per minute.…”
Section: Discussionmentioning
confidence: 99%
“…This was observed to facilitate convergence of the adaptive filters and improved the estimation accuracy, by achieving an AAE of 1.25 BPM. Investigating the same problem [19]- [21] achieved AAE of 1.8, 1.77, and 1.96 BPM respectively.…”
Section: Introductionmentioning
confidence: 97%
“…For the IHR, methods include time-frequency (TF) analyses (Gil et al, 2010; Mullan et al, 2015; Wu et al, 2016), adaptive filtering (Yousefi et al, 2014; Khan et al, 2015; Murthy et al, 2015; Schack et al, 2015; Mashhadi et al, 2016), Kalman filter (Frigo et al, 2015), sparse spectrum reconstruction (Zhang, 2015), blind source separation (Wedekind et al, 2015), a Bayesian approach (D'souza et al, 2015; Sun and Zhang, 2015), correntropy spectral density (CSD) (Garde et al, 2014), empirical mode decomposition (EMD) (Zhang et al, 2015), model fitting (Wadehn et al, 2015), deep learning (Jindal, 2016), fusion approaches (Temko, 2015; Zhu S. et al, 2015), etc. For the IRR, efforts include TF analysis (Chon et al, 2009; Orini et al, 2011; Dehkordi et al, 2015), sparse signal reconstruction (Zong and Jafari, 2015; Zhang and Ding, 2016), neural network (Johansson, 2003), modified multi-scale principal component analysis (Madhav et al, 2013), independent component analysis (Zhou et al, 2006), time-varying autoregressive regression (Lee and Chon, 2010b,a), fusion approaches (Karlen et al, 2013; Cernat et al, 2015), pulse-width variability (Lazaro et al, 2013; Cernat et al, 2014), CSD (Pelaez-Coca et al, 2013; Garde et al, 2014), EMD (Garde et al, 2013), a Bayesian approach (Pimentel et al, 2015; Zhu T. et al, 2015), etc.…”
Section: Introductionmentioning
confidence: 99%