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Automatic Assessment of the Type and Intensity of Agitated Hand Movements

机译:Automatic Assessment of the Type and Intensity of Agitated Hand Movements

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Abstract With increasing numbers of people living with dementia, there is growing interest in the automatic monitoring of agitation. Current assessments rely on carer observations within a framework of behavioural scales. Automatic monitoring of agitation can supplement existing assessments, providing carers and clinicians with a greater understanding of the causes and extent of agitation. Despite agitation frequently manifesting in repetitive hand movements, the automatic assessment of repetitive hand movements remains a sparsely researched field. Monitoring hand movements is problematic due to the subtle differences between different types of hand movements and variations in how they can be carried out; the lack of training data creates additional challenges. This paper proposes a novel approach to assess the type and intensity of repetitive hand movements using skeletal model data derived from video. We introduce a video-based dataset of five repetitive hand movements symptomatic of agitation. Using skeletal keypoint locations extracted from video, we demonstrate a system to recognise repetitive hand movements using discriminative poses. By first learning characteristics of the movement, our system can accurately identify changes in the intensity of repetitive movements. Wide inter-subject variation in agitated behaviours suggests the benefit of personalising the recognition model with some end-user information. Our results suggest that data captured using a single conventional RGB video camera can be used to automatically monitor agitated hand movements of sedentary patients.
机译:抽象的和越来越多的人的生活痴呆,越来越多的兴趣自动监测的风潮。评估依赖护理员的观察中框架的行为尺度。监控可以补充现有的风潮评估,提供护理人员和临床医生更大的理解原因和程度的风潮。体现在重复的手部运动,重复的手部运动的自动评估仍然是一个稀疏的研究领域。手的动作是有问题的微妙区别不同类型的手运动和如何的变化开展;额外的挑战。评估的类型和强度的新方法使用骨骼模型重复性的手的动作数据来源于视频。视频数据集的5个重复的手运动症状的风潮。骨骼从视频中提取关键点位置,我们将演示一个系统识别重复手的动作用歧视的姿势。第一次学习运动的特点,我们的系统可以准确地识别的变化强度重复动作。inter-subject激动的变化行为建议的好处个性化与一些终端用户信息识别模型。我们的研究结果表明,数据使用了可以使用单一传统的RGB视频摄像头自动监测激动手的动作久坐不动的病人。

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