Remote measurement of respiratory behaviour through RGB cameras has gained significant attention in the last couple of decades. Unlike traditional contact-based methods that may cause discomfort and require specialised equipment, contactless physiological measurement techniques offer a non-invasive way to monitor vital signs. In this survey paper, we comprehensively review the literature and techniques related to estimating respiratory information from RGB cameras. We categorise the approaches into three main groups: methods utilising respiration-induced body movements, methods extracting respiratory information from blood volume pulse signals obtained via remote photoplethysmography, and deep learning-based techniques for direct respiratory signal extraction. To evaluate these approaches, we perform a comparative assessment using publicly available datasets. As a result, we uncover emerging trends while identifying strengths and weaknesses in the field. Our contributions include a detailed review of the literature, a benchmark of representative methods on multiple datasets, and the introduction of a new Python package called resPyre that implements the benchmarked approaches, making them accessible to the research community. This survey aims to promote reproducibility, facilitate further research, and guide the development of more accurate and practical methods for remote respiration measurement using RGB cameras.

Remote respiration measurement with RGB cameras: A review and benchmark / G. Boccignone, V. Cuculo, A. D'Amelio, G. Grossi, R. Lanzarotti, S. Patania. - In: ACM COMPUTING SURVEYS. - ISSN 0360-0300. - (2025 Oct 14). [Epub ahead of print] [10.1145/3771763]

Remote respiration measurement with RGB cameras: A review and benchmark

G. Boccignone
Primo
;
A. D'Amelio
;
G. Grossi;R. Lanzarotti;S. Patania
Ultimo
2025

Abstract

Remote measurement of respiratory behaviour through RGB cameras has gained significant attention in the last couple of decades. Unlike traditional contact-based methods that may cause discomfort and require specialised equipment, contactless physiological measurement techniques offer a non-invasive way to monitor vital signs. In this survey paper, we comprehensively review the literature and techniques related to estimating respiratory information from RGB cameras. We categorise the approaches into three main groups: methods utilising respiration-induced body movements, methods extracting respiratory information from blood volume pulse signals obtained via remote photoplethysmography, and deep learning-based techniques for direct respiratory signal extraction. To evaluate these approaches, we perform a comparative assessment using publicly available datasets. As a result, we uncover emerging trends while identifying strengths and weaknesses in the field. Our contributions include a detailed review of the literature, a benchmark of representative methods on multiple datasets, and the introduction of a new Python package called resPyre that implements the benchmarked approaches, making them accessible to the research community. This survey aims to promote reproducibility, facilitate further research, and guide the development of more accurate and practical methods for remote respiration measurement using RGB cameras.
physiology; contactless monitoring; signal processing; machine learning
Settore INFO-01/A - Informatica
Settore IINF-05/A - Sistemi di elaborazione delle informazioni
14-ott-2025
14-ott-2025
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1194001
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