A posture monitoring system using accelerometers

Author(s):  
R.J. Nevins ◽  
N.G. Durdle ◽  
V.J. Raso
Author(s):  
Ferdews Tlili ◽  
Rim Haddad ◽  
Ridha Bouallegue ◽  
Neila Mezghani

Author(s):  
Nusrat Binta Nizam ◽  
Tohfatul Jinan ◽  
Wahida Binte Naz Aurthy ◽  
Md. Rakib Hossen ◽  
Jahid Ferdous

Author(s):  
Po-Yuan Jeng ◽  
Li-Chun Wang ◽  
Chaur-Jong Hu ◽  
Dean Wu

Sleep postures monitoring systems in the hospital aim at transforming sensing signals into quantitative data to characterize the sleep behaviors of the patient. However, a home-care sleep posture monitoring system needs to be user friendly. In this paper, we present iSleePost - a user-friendly home-care intelligent sleep posture monitoring system. We address the labor-intensive labeling issue of traditional machine learning approaches in the training phase. Our proposed mobile health (mHealth) system leverages the communications and computation capabilities of mobile phones for provisioning a continuous sleep posture monitoring service. Our experiments show that iSleePost can achieve 90 percent accuracy in recognizing sleep postures. More importantly, iSleePost demonstrates that an easily-wear wrist sensor can accurately quantify sleep postures.


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