The detection of breathing behavior using Eulerian-enhanced thermal video

The current gold standard for detecting and distinguishing between types of sleep apnea is expensive and invasive. This paper aims to examine the potential of inexpensive and unobtrusive thermal cameras in the identification and distinction between types of sleep apnea. A thermal camera was used to gather video of a subject performing regular nasal breathing, nasal hyperventilation and an additional trial simulating one type of sleep apnea. Simultaneously, a respiratory inductance plethysmography (RIP) band gathered respiratory data. Thermal video of all three trials were subjected to Eulerian Video Magnification; a procedure developed at MIT for enhancing subtle color variations in video data. Post magnification, nasal regions of interest were defined and mean region intensities were found for each frame of each trial. These signals were compared to determine the best performing region and compared to RIP data to validate breathing behavior. While some regions performed better, all region intensity signals depicted correct breathing behavior. The mean intensity signals for normal breathing and hyperventilation were correct and correlated well with RIP data. Furthermore, the RIP data resulting from the sleep apnea simulation clearly depicted chest movement while the corresponding mean intensity signal depicted lack of cyclical air flow. These results indicate that a subject's breathing behavior can be captured using thermal video and suggest that, with further development and additional equipment, thermal video can be used to detect and distinguish between types of sleep apnea.

[1]  Daniel J Buysse Sleep health: can we define it? Does it matter? , 2014, Sleep.

[2]  Marc Baltzan,et al.  Sleep and aging: 1. Sleep disorders commonly found in older people , 2007, Canadian Medical Association Journal.

[3]  Pablo Aqueveque,et al.  Contact pressure monitoring device for sleep studies , 2013, 2013 35th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC).

[4]  Andrew Kao,et al.  A novel therapeutic approach for the treatment of central sleep apnea: The remedē® system. , 2014, Cardiovascular revascularization medicine : including molecular interventions.

[5]  Clodagh M Ryan,et al.  Sleep Apnea and Stroke. , 2015, The Canadian journal of cardiology.

[6]  J. Walsh,et al.  Sleep: a health imperative. , 2012, Sleep.

[7]  Sanjay R Patel,et al.  Disparities and genetic risk factors in obstructive sleep apnea. , 2016, Sleep medicine.

[8]  Frédo Durand,et al.  Eulerian video magnification for revealing subtle changes in the world , 2012, ACM Trans. Graph..

[9]  Anna M. Bianchi,et al.  Sleep-wake detection based on respiratory signal acquired through a Pressure Bed Sensor , 2012, 2012 Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[10]  Daniel Austin,et al.  Unobtrusive classification of sleep and wakefulness using load cells under the bed , 2012, 2012 Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[11]  Seán F. McLoone,et al.  Identification of nocturnal movements during sleep using the non-contact under mattress bed sensor , 2011, 2011 Annual International Conference of the IEEE Engineering in Medicine and Biology Society.