A machine learning approach for contactless heart rate monitoring using a webcam reduced the root mean squared error of HR detection from 43.76 to 3.64 beats/min in naturalistic measurements.
Heart rate monitoring
Machine learning approach for contactless heart rate monitoring vs Standard contactless measurement
Root mean squared error of heart rate detection
Absolute Event Rate: 3.64% vs 43.76%
Unobtrusive, contactless recordings of physiological signals are very important for many health and human-computer interaction applications. Most current systems require sensors which intrusively touch the user's skin. Recent advances in contact-free physiological signals open the door to many new types of applications. This technology promises to measure heart rate (HR) and respiration using video only. The effectiveness of this technology, its limitations, and ways of overcoming them deserves particular attention. In this paper, we evaluate this technique for measuring HR in a controlled situation, in a naturalistic computer interaction session, and in an exercise situation. For comparison, HR was measured simultaneously using an electrocardiography device during all sessions. The results replicated the published results in controlled situations, but show that they cannot yet be considered as a valid measure of HR in naturalistic human-computer interaction. We propose a machine learning approach to improve the accuracy of HR detection in naturalistic measurements. The results demonstrate that the root mean squared error is reduced from 43.76 to 3.64 beats/min using the proposed method.
Building similarity graph...
Analyzing shared references across papers
Loading...
Monkaresi et al. (Fri,) conducted a other in Heart rate monitoring. Machine learning approach for contactless heart rate monitoring vs. Standard contactless measurement was evaluated on Root mean squared error of heart rate detection. A machine learning approach for contactless heart rate monitoring using a webcam reduced the root mean squared error of HR detection from 43.76 to 3.64 beats/min in naturalistic measurements.
synapsesocial.com/papers/6a181ec51723722a886f4f2b — DOI: https://doi.org/10.1109/jbhi.2013.2291900
Hamed Monkaresi
Razi University
Rafael A. Calvo
Universidad del Desarrollo
Hong Yan
Regeneron (United States)
IEEE Journal of Biomedical and Health Informatics
The University of Sydney
City University of Hong Kong
Building similarity graph...
Analyzing shared references across papers
Loading...