覆盖体分析在病人监护中的应用

Ching-Wei Wang
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引用次数: 0

摘要

在睡眠障碍诊断等医疗应用中,患者监护通常采用脉搏血氧仪和多导睡眠图(PSG)等侵入性监护设备,但这些设备与患者身体的连接会干扰睡眠,从而影响结果。此外,侵入性方法往往无法持续监测,因为设备可能在受试者睡眠时无意识地拔掉。本文提出了一种自动无创视频监控方法,用于分析持续严重遮挡条件下(覆盖)的人类活动。该方法是一种基于模型的方法,利用静态形状特征和动态运动特征来抑制假阳性检测,识别人体活动,并自我改进覆盖人体姿态估计。
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Covered body analysis in application to patient monitoring
Patient monitoring in medical applications such as diagnosis of sleep disorders commonly adopts invasive monitoring equipments such as pulse oximetry and polysomnogram (PSG), but their attachment to the patient's body disturb sleep and therefore compromise results. Furthermore, the invasive approaches often fail to monitor continuously because the devices can be pulled off by the subject during sleep unconsciously. This paper presents an automated noninvasive video monitoring approach to analyze (covered) human activity in conditions with persistent heavy occlusion. The proposed method is a model-based approach, employing both static shape features and dynamic motion features to suppress false positive detection, to identify human activity, and to self-improve the covered human pose estimation.
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