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Stroke patient daily activity observation system

机译:中风患者日常活动观察系统

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Stroke is a leading cause of long-term adult disability. Stroke patients can recover through rehabilitation programs prescribed by occupational therapists (OT); however, an individualized rehabilitation program can reduce recovery times compared to traditional ones. In this paper, we propose a daily activity observation system (DAOS) that uses a Kinect v2 sensor to collect and retrieve motion data. The DAOS has a robust interface to extract depth and skeleton data, and supports data collection in an unstructured kitchen environment. Depth data are used to perform action recognition and track problematic movements, while skeleton data are used to calculate mean velocities of hand joints, max extensions, symmetry of hand movements, and other assessment metrics for therapists. Histogram of oriented 4D normals is used for action recognition. The action recognition accuracy is 97% on a multi-class kitchen action dataset. Through action recognition and accurate assessment, we present a novel system that can assist therapists and their ability to provide quality care to stroke patients.
机译:中风是成人长期残疾的主要原因。中风患者可以通过职业治疗师(OT)制定的康复计划康复;但是,与传统的康复计划相比,个性化的康复计划可以减少恢复时间。在本文中,我们提出了一种日常活动观察系统(DAOS),该系统使用Kinect v2传感器来收集和检索运动数据。 DAOS具有强大的界面来提取深度和骨架数据,并支持在非结构化厨房环境中进行数据收集。深度数据用于执行动作识别并跟踪有问题的动作,而骨架数据用于计算手部关节的平均速度,最大伸展,手部动作的对称性以及治疗师的其他评估指标。定向4D法线的直方图用于动作识别。在多类厨房动作数据集上,动作识别精度为97%。通过动作识别和准确评估,我们提出了一种新颖的系统,可以帮助治疗师及其为中风患者提供优质护理的能力。

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