TY - GEN
T1 - Sleep monitoring via depth video compression & analysis
AU - Yang, Cheng
AU - Cheung, Gene
AU - Chan, Kevin
AU - Stankovic, Vladimir
PY - 2014
Y1 - 2014
N2 - ![CDATA[Quality of sleep greatly affects a person's physiological well-being. Traditional sleep monitoring systems are expensive in cost and intrusive enough that they disturb natural sleep of clinical patients. In this paper, we propose an inexpensive non-intrusive sleep monitoring system using recorded depth video only. In particular, we propose a two-part solution composed of depth video compression and analysis. For acquisition and compression, we first propose an alternating-frame video recording scheme, so that different 8 of the 11 bits in MS Kinect captured depth images are extracted at different instants for efficient encoding using H.264 video codec. At decoder, the uncoded 3 bits in each frame can be recovered accurately via a block-based search procedure. For analysis, we estimate parameters of our proposed dual-ellipse model in each depth image. Sleep events are then detected via a support vector machine trained on statistics of estimated ellipse model parameters over time. Experimental results show first that our depth video compression scheme outperforms a competing scheme that records only the eight most significant bits in PSNR in mid- to high-bitrate regions. Further, we show also that our monitoring can detect critical sleep events such as hypopnoea using our trained SVM with very high success rate.]]
AB - ![CDATA[Quality of sleep greatly affects a person's physiological well-being. Traditional sleep monitoring systems are expensive in cost and intrusive enough that they disturb natural sleep of clinical patients. In this paper, we propose an inexpensive non-intrusive sleep monitoring system using recorded depth video only. In particular, we propose a two-part solution composed of depth video compression and analysis. For acquisition and compression, we first propose an alternating-frame video recording scheme, so that different 8 of the 11 bits in MS Kinect captured depth images are extracted at different instants for efficient encoding using H.264 video codec. At decoder, the uncoded 3 bits in each frame can be recovered accurately via a block-based search procedure. For analysis, we estimate parameters of our proposed dual-ellipse model in each depth image. Sleep events are then detected via a support vector machine trained on statistics of estimated ellipse model parameters over time. Experimental results show first that our depth video compression scheme outperforms a competing scheme that records only the eight most significant bits in PSNR in mid- to high-bitrate regions. Further, we show also that our monitoring can detect critical sleep events such as hypopnoea using our trained SVM with very high success rate.]]
KW - depth image processing
KW - depth video compression
KW - sleep disorders
KW - sleep monitoring
UR - http://handle.uws.edu.au:8081/1959.7/uws:29326
UR - http://www.ieee-icme.org/icme2014/www.icme2014.org/index.html
U2 - 10.1109/ICMEW.2014.6890645
DO - 10.1109/ICMEW.2014.6890645
M3 - Conference Paper
SN - 9781479947171
BT - Proceedings of IEEE International Conference on Multimedia and Expo (14-18 July 2014, Chengdu, China)
PB - IEEE
T2 - IEEE International Conference on Multimedia and Expo
Y2 - 28 June 2020
ER -