Computationally efficient heart rate estimation during physical exercise using photoplethysmographic signals

Wearable devices that acquire photoplethysmographic (PPG) signals are becoming increasingly popular to monitor the heart rate during physical exercise. However, high accuracy and low computational complexity are conflicting requirements. We propose a method that provides highly accurate heart rate estimates at a very low computational cost in order to be implementable on wearables. To achieve the lowest possible complexity, only basic signal processing operations, i.e., correlation-based fundamental frequency estimation and spectral combination, harmonic noise damping and frequency domain tracking, are used. The proposed approach outperforms state-of-the-art methods on current benchmark data considerably in terms of computation time, while achieving a similar accuracy.

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Task Dataset Model Metric Name Metric Value Global Rank Benchmark
Heart rate estimation PPG-DaLiA Schäck2017 MAE [bpm, session-wise] 20.45 ± 7.1 # 5
Heart rate estimation WESAD Schäck2017 MAE [bpm, session-wise] 19.97 ± 8.1 # 5

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