Detection of patient's bed statuses in 3D using a Microsoft Kinect.

EMBC(2014)

引用 16|浏览5
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摘要
Patients spend the vast majority of their hospital stay in an unmonitored bed where various mobility factors can impact patient safety and quality. Specifically, bed positioning and a patient's related mobility in that bed can have a profound impact on risks such as pneumonias, blood clots, bed ulcers and falls. This issue has been exacerbated as the nurse-per-bed (NPB) ratio has decreased in recent years. To help assess these risks, it is critical to monitor a hospital bed's positional status (BPS). Two bed positional statuses, bed height (BH) and bed chair angle (BCA), are of critical interests for bed monitoring. In this paper, we develop a bed positional status detection system using a single Microsoft Kinect. Experimental results show that we are able to achieve 94.5% and 93.0% overall accuracy of the estimated BCA and BH in a simulated patient's room environment.
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关键词
bed ulcers,bed positioning,blood clots,patient bed status detection,3d microsoft kinect,patient monitoring,hospitals,biomedical engineering,pneumonias,falls,hospital stay,nurse-per-bed ratio,bed chair angle,patient safety,bed height,patient quality
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