Publication | Closed Access
A method for classification of movements in bed
17
Citations
7
References
2011
Year
Unknown Venue
Gait AnalysisSleep DisordersEngineeringGaussian Mixture ModelsWearable TechnologyMotor ControlMovement AnalysisKinesiologyData SciencePattern RecognitionBiostatisticsKinematicsHealth SciencesSleepTemporal Pattern RecognitionFunctional Data AnalysisMotion AnalysisHuman MovementInvoluntary MovementActivity RecognitionDisrupted Sleep
Sleep is characterized by episodes of immobility interrupted by periods of voluntary and involuntary movement. Increased mobility in bed can be a sign of disrupted sleep that may reduce sleep quality. This paper describes a method for classification of the type of movement in bed using load cells installed at the corners of a bed. The approach is based on Gaussian Mixture Models using a time-domain feature representation. The movement classification system is evaluated on data collected in the laboratory, and it classified correctly 84.6% of movements. The unobtrusive aspect of this approach is particularly valuable for longer-term home monitoring against a standard clinical setting.
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