Publication:
Three methods for extracting respiratory rate from speckle plethysmography
Date
2025
Proceedings Paper
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Journal
BIOPHOTONICS IN EXERCISE SCIENCE, SPORTS MEDICINE, HEALTH MONITORING TECHNOLOGIES, AND WEARABLES VI
Abstract
Speckle plethysmography (SPG) is a novel technique for acquiring physiological data using laser speckle imaging. It is a promising signal modality for measuring vital signs both through contact and remote methods. Compared to photoplethysmography (PPG), SPG is more robust, being less sensitive to variations in ambient light and skin melanin content, while offering a superior signal-to-noise ratio. These attributes make SPG an attractive alternative for continuous monitoring in wearable or contact configurations. SPG has demonstrated reliability in extracting heart rate and heart rate variability, with results comparable to established gold standards. However, its application for respiratory rate (RR) detection remains unexplored. This study addresses this gap by extracting RR from SPG signals through the analysis of three key features: baseline wander, frequency modulation, and amplitude modulation. These techniques are commonly employed in the extraction of respiratory modulations from PPG signals. SPG data were collected using a contact sensor equipped with a near-infrared laser and a camera in reflective mode. Ten healthy volunteers participated in the study, placing their fingers on the SPG sensor. An algorithm was developed to extract RR by quantifying baseline, amplitude and frequency changes in the signals and was tested during phases of spontaneous and paced breathing. The extracted RR was compared to measurements obtained from respiratory belt signals, which were used as reference standard. During spontaneous breathing, for SPG a mean absolute error of 1.67 was observed with a Pearsons r of 0.68 for baseline wander of the peak as compared to the respiratory belt. Our results indicate that SPG effectively detects respiratory activity with accuracy comparable to the reference method. These results position SPG as an interesting modality for respiratory monitoring, further expanding its versatility in optical sensing applications.