Abstract
Sleep healthcare at home is a new research topic that needs to develop new sensors, hardware and algorithms with the consideration of convenience, portability and accuracy. Monitoring sleep behaviors by visual sensors represents one new unobtrusive approach to facilitating sleep monitoring and benefits sleep quality. The challenge of video surveillance for sleep behavior analysis is that we have to tackle bad image illumination issue and large pose variations during sleeping. This paper proposes a robust method for sleep pose analysis with human joints model. The method first tackles the illumination variation issue of infrared videos to improve the image quality and help better feature extraction. Image matching by keypoint features is proposed to detect and track the positions of human joints and build a human model robust to occlusion. Sleep poses are then inferred from joint positions by probabilistic reasoning in order to tolerate occluded joints. Experiments are conducted on the video polysomnography data recorded in sleep laboratory. Sleep pose experiments are given to examine the accuracy of joint detection and tacking, and the accuracy of sleep poses. High accuracy of the experiments demonstrates the validity of the proposed method.
Highlights
Sleep disorders induce irregular sleeping patterns and sleep deprivation that have serious impacts on health
Sleep poses are inferred from joint positions by probabilistic reasoning in order to tolerate occluded joints
We evaluated these components in our method: near-infrared image enhancement, joint detection and pose recognition
Summary
Sleep disorders induce irregular sleeping patterns and sleep deprivation that have serious impacts on health. Obstructive sleep apnea (OSA) [1] is one of the most well recognized sleep disorders. OSA is characterized by repetitive obstruction of the upper airways during sleep, resulting in oxygen de-saturation and frequent brain arousal. Sleep monitoring systems [2] are an important objective diagnosis method to assess sleep quality and identify sleep disorders. They provide quantitative data about irregularity of brain and body behaviors in sleeping periods and duration. This information helps the analysis of sleep-wake state, diagnosis of the severity of disorders, and prompt treatment of sleep-related diseases
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