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Body and Visual Sensor Fusion for Motion Analysis in Ubiquitous Healthcare Systems

机译:身体和视觉传感器融合,用于无处不在的医疗系统中的运动分析

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Human motion analysis provides a valuable solution for monitoring the wellbeing of the elderly, quantifying post-operative patient recovery and monitoring the progression of neurodegenerative diseases such as Parkinsonȁ9;s. The development of accurate motion analysis models, however, requires the integration of multi-sensing modalities and the utilization of appropriate data analysis techniques. This paper describes a robust framework for improved patient motion analysis by integrating information captured by body and visual sensor networks. Real-time target extraction is applied and a skeletonization procedure is subsequently carried out to quantify the internal motion of moving target and compute two metrics, spatiotemporal cyclic motion between leg segments and head trajectory, for each vision node. Extracted motion metrics from multiple vision nodes and accelerometer information from a wearable body sensor are then fused at the feature level by using K-Nearest Neighbor algorithm and used to classify targetȁ9;s walking gait into normal or abnormal. The potential value of the proposed framework for patient monitoring is demonstrated and the results obtained from practical experiments are described.
机译:人体运动分析为监测老年人的健康状况,量化术后患者的康复情况以及监测神经退行性疾病(如帕金森9)的进展提供了宝贵的解决方案。但是,精确运动分析模型的开发需要集成多种传感模式并利用适当的数据分析技术。本文介绍了一种通过整合人体和视觉传感器网络捕获的信息来改善患者运动分析的强大框架。应用实时目标提取,然后执行骨架化过程以量化运动目标的内部运动,并为每个视觉节点计算两个度量,即腿段和头部轨迹之间的时空循环运动。然后,通过使用K最近邻算法将多个视觉节点中提取的运动度量和可穿戴式人体传感器中的加速度计信息融合到特征级别,并将目标行走步态分类为正常步态或异常步态。证明了所提出的用于患者监测的框架的潜在价值,并描述了从实际实验中获得的结果。

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