An in situ optical oyster heart rate sensor generates signals requiring frequency estimation with properties different to human ECG and speech signals. We discuss the method of signal generation and highlight a number of these signal properties. An optimal heart rate estimation approach was identified by application of a variety of frequency estimation techniques and comparing results to manually acquired values. Although a machine learning approach achieved the best performance, accurately estimating 96.8% of the heart rates correctly, a median filtered autocorrelation approach achieved 93.7% with significantly less computational requirement. A method for estimating heart rate variation is also presented.
CITATION STYLE
Hellicar, A. D., Rahman, A., Smith, D. V., Smith, G., McCulloch, J., Andrewartha, S., & Morash, A. (2015). Analgorithm for the Automatic Analysis of signals from an Oyster Heart Rate Sensor. IEEE Sensors Journal, 15(8), 4480–4487. https://doi.org/10.1109/JSEN.2015.2422375
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