Slidingan analysis of analytical signal of non-contact photoplethysmography for assessing heart rate

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Abstract

The paper proposes a method for studying the variability of the subject’s heart rate based on the intellectual analysis of the pulse wave measured with remote photoplethysmography. The logically related stages of the formation of quadrature components based on the Hilbert transform of biomedical signals’ dynamics are presented. Within the framework of modern methods of intellectual analysis of non-stationary time series, realizations of adaptive estimates of instantaneous frequencies and periods of the heartbeat basic tone are obtained.

About the authors

L. V. Labunets

Bauman Moscow State Technical University; Российский новый университет

Author for correspondence.
Email: labunets@bmstu.ru
Russian Federation, 2-ya Baumanskaya st., 5, Moscow, 105005; Radio st., 22, Moscow, 105005

D. S. Lukin

Российский новый университет

Email: labunets@bmstu.ru
Russian Federation, Radio st., 22, Moscow, 105005

M. Y. Ryakhina

Bauman Moscow State Technical University

Email: labunets@bmstu.ru
Russian Federation, 2-ya Baumanskaya st., 5, Moscow, 105005

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