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Stream data analysis of body sensors for sleep posture monitoring: An automatic labelling approach

机译:睡眠姿势监测体传感器流数据分析:自动标记方法

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Sleeping is one of the most important activities in our daily lives. However, very few people really understand their sleeping habits, which affect sleep-related diseases such as sleep apnea, back problems or even snoring. Most current techniques that monitor, predict and quantify sleep postures are limited to use in hospitals and/or need the intervention of caregivers. In this paper, we describe a system to automatically monitor, predict and quantify sleep postures that may be self-applied by the general public even in a non-hospital environment such as at a persons home. A Random Forest approach is adopted during training to predict and quantify sleep postures. After going through training procedures, a person needs only one sensor placed on the wrist to recognize the persons sleep postures. Our preliminary experiments using a set of testing data show about 90 percent accuracy, indicating that this design has a promising future to accurately analyze, predict and quantify human sleep postures.
机译:睡眠是我们日常生活中最重要的活动之一。然而,很少有人真正了解他们的睡眠习惯,这会影响睡眠呼吸暂停,背部问题等睡眠相关的疾病。监测,预测和量化睡眠姿势的大多数技术都仅限于医院和/或需要护理人员的干预。在本文中,我们描述了一个自动监测,预测和量化睡眠姿势的系统,即使在诸如在一个人家中的非医院环境中,也可以通过公众自我应用。在培训期间采用随机森林方法来预测和量化睡眠姿势。经过培训程序后,一个人只需要一个放在手腕上的传感器,以识别睡眠姿势。我们使用一套测试数据的初步实验显示约90%的准确性,表明该设计具有有希望的未来,以准确分析,预测和量化人类睡眠姿势。

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