Literature DB >> 29805920

Algorithms for Monitoring Heart Rate and Respiratory Rate From the Video of a User's Face.

Shourjya Sanyal1, Koushik Kumar Nundy1.   

Abstract

Smartphone cameras can measure heart rate (HR) by detecting pulsatile photoplethysmographic (iPPG) signals from post-processing the video of a subject's face. The iPPG signal is often derived from variations in the intensity of the green channel as shown by Poh et. al. and Verkruysse et. al.. In this pilot study, we have introduced a novel iPPG method where by measuring variations in color of reflected light, i.e., Hue, and can therefore measure both HR and respiratory rate (RR) from the video of a subject's face. This paper was performed on 25 healthy individuals (Ages 20-30, 15 males and 10 females, and skin color was Fitzpatrick scale 1-6). For each subject we took two 20 second video of the subject's face with minimal movement, one with flash ON and one with flash OFF. While recording the videos we simultaneously measuring HR using a Biosync B-50DL Finger Heart Rate Monitor, and RR using self-reporting. This paper shows that our proposed approach of measuring iPPG using Hue (range 0-0.1) gives more accurate readings than the Green channel. HR/Hue (range 0-0.1) ([Formula: see text], [Formula: see text]-value = 4.1617, and RMSE = 0.8887) is more accurate compared with HR/Green ([Formula: see text], [Formula: see text]-value = 11.60172, and RMSE = 0.9068). RR/Hue (range 0-0.1) ([Formula: see text], [Formula: see text]-value = 0.2885, and RMSE = 3.8884) is more accurate compared with RR/Green ([Formula: see text], [Formula: see text]-value = 0.5608, and RMSE = 5.6885). We hope that this hardware agnostic approach for detection of vital signals will have a huge potential impact in telemedicine, and can be used to tackle challenges, such as continuous non-contact monitoring of neo-natal and elderly patients. An implementation of the algorithm can be found at https://pulser.thinkbiosolution.com.

Entities:  

Keywords:  Heart rate; hue; photoplethysmography; respiratory rate; smartphone; smartphone camera

Year:  2018        PMID: 29805920      PMCID: PMC5957265          DOI: 10.1109/JTEHM.2018.2818687

Source DB:  PubMed          Journal:  IEEE J Transl Eng Health Med        ISSN: 2168-2372            Impact factor:   3.316


  22 in total

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  10 in total

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Review 4.  Contactless Vital Signs Monitoring From Videos Recorded With Digital Cameras: An Overview.

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5.  Secure Health Monitoring Communication Systems Based on IoT and Cloud Computing for Medical Emergency Applications.

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6.  Smartphone movement sensors for the remote monitoring of respiratory rates: Technical validation.

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7.  Remote Photoplethysmography Is an Accurate Method to Remotely Measure Respiratory Rate: A Hospital-Based Trial.

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8.  Respiration pattern recognition by wearable mask device.

Authors:  Vishal Varun Tipparaju; Di Wang; Jingjing Yu; Fang Chen; Francis Tsow; Erica Forzani; Nongjian Tao; Xiaojun Xian
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9.  A real-time camera-based adaptive breathing monitoring system.

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Review 10.  Effectiveness of consumer-grade contactless vital signs monitors: a systematic review and meta-analysis.

Authors:  Chi Pham; Khashayar Poorzargar; Mahesh Nagappa; Aparna Saripella; Matteo Parotto; Marina Englesakis; Kang Lee; Frances Chung
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  10 in total

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