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Human Locomotion Assistance using Two-Dimensional Features Based Adaptive Oscillator

机译:使用基于二维特征的自适应振荡器的人体运动辅助

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In this paper, an adaptive oscillator method Amplitude Omega Adaptive Oscillator (AωAO), is proposed to provide bilateral hip assistance for human locomotion. A realtime human locomotion recognition algorithm is integrated with AωAO to make it robust for various gait activities. The human locomotion recognition algorithm comprises both low-level (to detect activities) and high-level classifiers to detect transitions between activities. The Support Vector Machine (SVM) and Discrete Hidden Markov Model (DHMM) are used as low-level and high-level classifiers respectively. The human locomotion recognition algorithm is trained using two-dimensional features, Amplitude (A) and Omega (ω), obtained from thigh angle measurements, using a single Inertial Measurement Unit (IMU) on each limb. In AωAO, a pool with four adaptive oscillators (AOs) is used to estimate the filtered thigh angle trajectory. This pool converges to the frequency and phase of the signal, adaptively. To account for amplitude convergence, the amplitude parameters of the oscillator need to be reinitialized based on the human activity, identified by the human locomotion recognition algorithm. In addition to the adaptive oscillators, a Gaussian kernel function based nonlinear filter is employed to predict the future estimates of thigh angles. These predicted estimates, along with the user thigh angles, are used to calculate hip assistive torque in real-time. To verify the efficacy of the proposed approach, experiments were performed, using Hip exoskeleton for Superior Assistance (HeSA), on three healthy subjects. The human locomotion recognition algorithm reported higher classification and prediction accuracy of 95.2% and 94.9 % respectively. Activity Classification, Assistive devices, Human Activity Recognition.
机译:在本文中,提出了一种自适应振荡器方法-振幅ω自适应振荡器(AωAO),为人体运动提供双侧髋关节辅助。实时人体运动识别算法与AωAO集成在一起,使其对于各种步态活动均具有鲁棒性。人体运动识别算法包括低级(检测活动)和高级分类器,以检测活动之间的转换。支持向量机(SVM)和离散隐马尔可夫模型(DHMM)分别用作低级别分类器和高级别分类器。使用从每个大腿角度使用单个惯性测量单位(IMU)从大腿角度测量获得的二维特征(振幅)(A)和欧米伽(ω)来训练人类运动识别算法。在AωAO中,具有四个自适应振荡器(AO)的池用于估计滤波后的大腿角度轨迹。该池自适应地收敛到信号的频率和相位。为了解决振幅收敛问题,需要根据人类活动(由人类运动识别算法识别)来重新初始化振荡器的振幅参数。除了自适应振荡器,还使用基于高斯核函数的非线性滤波器来预测大腿角度的未来估计。这些预测的估计值以及用户的大腿角度可用于实时计算髋关节辅助扭矩。为了验证所提出方法的有效性,使用髋关节外骨骼进行高级辅助(HeSA)对三个健康受试者进行了实验。人体运动识别算法的分类和预测准确率分别为95.2%和94.9%。活动分类,辅助设备,人类活动识别。

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