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Vision-Based Detection of Unusual Patient Activity

机译:基于视觉的异常患者活动的检测

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Automated patient monitoring in hospital environments has gained increased attention in the last decade. An important problem is that of behaviour analysis of psychiatric patients, where adequate monitoring can minimise the risk of harm to hospital staff, property and to the patients themselves. For this task, we perform a preliminary investigation on visual-based patient monitoring using surveillance cameras. The proposed method uses statistics of optical flow vectors extracted from the patient movements to identify dangerous behaviour. In addition, the method also performs foreground segmentation followed by blob tracking in order to extract shape and temporal characteristics of blobs. Dangerous behaviour includes attempting to break out of safe-rooms, self-harm and fighting. The features considered include a temporal and multi-resolution analysis of blob coarseness, blob area, movement speed and position in the room. This information can also be used to normalise the other features according to estimated position of the patient in the room. In this preliminary study, experiments in a real hospital scenario illustrate the potential applicability of the method.
机译:在医院环境中自动化患者监测在过去十年中获得了更多的关注。一个重要的问题是精神病患者的行为分析,充分监测可以最大限度地减少医院工作人员,财产和患者自己的伤害风险。对于此任务,我们使用监控摄像机对视觉患者监测进行初步调查。所提出的方法使用从患者运动中提取的光学流向矢量的统计来识别危险行为。另外,该方法还执行前景分段,然后执行BLOB跟踪,以提取BLOB的形状和时间特征。危险的行为包括试图突破安全的房间,自我伤害和战斗。所考虑的特征包括Blob粗糙度,Blob区域,运动速度和位置的斑点和多分辨率分析。该信息还可用于根据患者在房间内的估计位置来归一化其他特征。在这项初步研究中,真正的医院情景中的实验说明了该方法的潜在适用性。

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