智能环境下步态损伤量化的变化分析

Ahmed Salah El-Din, M. Elsayed, A. Alsebai, N. E. Gayar, M. Elhelw
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引用次数: 2

摘要

视觉传感器网络(VSNs)基于增强的三维感知和协同推理,开辟了智能自主应用的新领域。一个新兴的VSN应用领域是普遍的医疗保健服务,从分布式视觉节点计算的步态信息用于观察老年人的健康状况,量化术后患者的恢复情况,并监测神经退行性疾病(如帕金森病)的进展。然而,患者特异性步态分析模型的开发是具有挑战性的,因为在手术前从同一患者获得正常和受损的步态样本以建立步态分类的监督模型是不可实现的。本文提出了一种新的基于vsn的框架,通过变化分析来量化患者特异性步态障碍和术后恢复。首先对VSN数据进行实时目标提取,然后进行骨架化处理,量化运动目标的内部运动并计算两个特征;每个视觉节点的腿段和头部轨迹之间的时空循环运动。然后使用变化分析来测量术前和术后收集的两个未标记数据集之间的变化,即差异,并量化步态变化。本文论证了所提出的框架在患者步态监测中的潜在价值,并描述了实际实验结果。
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Change analysis for gait impairment quantification in smart environments
Visual Sensor Networks (VSNs) open up a new realm of smart autonomous applications based on enhanced three-dimensional sensing and collaborative reasoning. An emerging VSN application domain is pervasive healthcare delivery where gait information computed from distributed vision nodes is used for observing the wellbeing of the elderly, quantifying post-operative patient recovery and monitoring the progression of neurodegenerative diseases such as Parkinson's. The development of patient-specific gait analysis models, however, is challenging since it is unfeasible to obtain normal and impaired gait examples from the same patient before the operation in order to build supervised models for gait classification. This paper presents a novel VSN-based framework for quantification of patient-specific gait impairment and post-operative recovery by using change analysis. Real-time target extraction is first applied to VSN data and a skeletonization procedure is subsequently carried out to quantify the internal motion of moving target and compute two features; spatiotemporal cyclic motion between leg segments and head trajectory for each vision node. Change analysis is then used to measure the change, i.e. difference, between two unlabeled datasets collected pre- and post-operatively and quantify gait changes. The potential value of the proposed framework for patient gait monitoring is demonstrated and the results obtained from practical experiments are described.
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