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首页> 外文期刊>IEEE transactions on neural systems and rehabilitation engineering >Identification of Gait Events in Healthy Subjects and With Parkinson’s Disease Using Inertial Sensors: An Adaptive Unsupervised Learning Approach
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Identification of Gait Events in Healthy Subjects and With Parkinson’s Disease Using Inertial Sensors: An Adaptive Unsupervised Learning Approach

机译:使用惯性传感器鉴定健康受试者的步态事件和帕金森病:自适应无人驾驶的学习方法

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摘要

Automatic identification of gait events is an essential component of the control scheme of assistive robotic devices. Many available techniques suffer limitations for real-time implementations and in guaranteeing high performances when identifying events in subjects with gait impairments. Machine learning algorithms offer a solution by enabling the training of different models to represent the gait patterns of different subjects. Here our aim is twofold: to remove the need for training stages using unsupervised learning, and to modify the parameters according to the changes within a walking trial using adaptive procedures. We developed two adaptive unsupervised algorithms for real-time detection of four gait events, using only signals from two single-IMU foot-mounted wearable devices. We evaluated the algorithms using data collected from five healthy adults and seven subjects with Parkinson's disease (PD) walking overground and on a treadmill. Both algorithms obtained high performance in terms of accuracy (F-1-score >= 0.95 for both groups), and timing agreement using a force-sensitive resistors as reference (mean absolute differences of 66 +/- 53 msec for the healthy group, and 58 +/- 63 msec for the PD group). The proposed algorithmsdemonstrated the potential to learn optimal parameters for a particular participant and for detecting gait eventswithout additional sensors, external labeling, or long training stages.
机译:步态事件的自动识别是辅助机器人设备控制方案的基本组成部分。许多可用技术遭受实时实现的限制,并且在识别具有步态障碍的受试者的事件时保证高性能。机器学习算法通过启用不同模型的培训来表示不同主题的步态模式来提供解决方案。在这里,我们的目标是双重的:消除使用无监督学习的培训阶段的需求,并根据使用自适应过程根据步行试验中的变化修改参数。我们开发了两个自适应的无监督算法,用于实时检测四个步态事件,仅使用来自两个单一IMU脚踏的可穿戴设备的信号。我们使用从五个健康成年人和七个受试者收集的数据进行评估算法,帕金森病(PD)走在跑步机上。两种算法在精度(两个组的F-1分数> = 0.95)中获得了高性能,以及使用力敏感电阻作为参考的时序协议(对于健康组的66 +/- 53毫秒的平均绝对差异,为PD组58 +/- 63毫秒)。所提出的算法DemonStrated是学习特定参与者的最佳参数的潜力,并用于检测步态事件,用于额外的传感器,外部标记或长训练阶段。

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  • 作者单位

    Univ Sao Paulo Dept Mech Engn BR-13566590 Sao Carlos Brazil|MIT Dept Mech Engn Cambridge MA 02139 USA;

    Univ Sao Paulo Dept Mech Engn BR-13566590 Sao Carlos Brazil|Univ Sao Paulo Ctr Adv Studies Rehabil BR-13566590 Sao Carlos Brazil|Univ Sao Paulo Ctr Robot Sao Carlos BR-13566590 Sao Carlos Brazil;

    MIT Dept Mech Engn Cambridge MA 02139 USA|Univ Maryland Sch Med Dept Neurol Baltimore MD 21201 USA|Fujita Hlth Univ Sch Med Dept Rehabil Med 1 Toyoake Aichi 4701192 Japan|Newcastle Univ Inst Neurosci Newcastle Upon Tyne NE1 7RU Tyne & Wear England|Osaka Univ Dept Mech Sci & Bioengn Osaka 5650871 Japan|Wolfson Sch Mech Elect & Mfg Loughborough LE11 3TU Leics England|Sogang Univ Coll Engn Seoul 04107 South Korea;

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  • 原文格式 PDF
  • 正文语种 eng
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  • 关键词

    Gait analysis; wearable sensors; hidden Markov model; human biomechanics; robotic rehabilitation;

    机译:步态分析;可穿戴传感器;隐马尔可夫模型;人生物力学;机器人康复;

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