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Evaluating EMG Feature and Classifier Selection for Application to Partial-Hand Prosthesis Control

机译:评估EMG特征和分类器选择,以应用于部分手部假体控制

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Pattern recognition-based myoelectric control of upper-limb prostheses has the potential to restore control of multiple degrees of freedom. Though this control method has been extensively studied in individuals with higher-level amputations, few studies have investigated its effectiveness for individuals with partial-hand amputations. Most partial-hand amputees retain a functional wrist and the ability of pattern recognition-based methods to correctly classify hand motions from different wrist positions is not well studied. In this study, focusing on partial-hand amputees, we evaluate (1) the performance of non-linear and linear pattern recognition algorithms and (2) the performance of optimal EMG feature subsets for classification of four hand motion classes in different wrist positions for 16 non-amputees and 4 amputees. Our results show that linear discriminant analysis and linear and non-linear artificial neural networks perform significantly better than the quadratic discriminant analysis for both non-amputees and partial-hand amputees. For amputees, including information from multiple wrist positions significantly decreased error ( p ?
机译:基于模式识别的上肢假体的肌电控制具有恢复多个自由度的潜力。尽管这种控制方法已经在截肢较高的个体中进行了广泛的研究,但很少有研究调查其对部分截肢个体的有效性。大多数截肢截肢者保留了功能正常的手腕,而基于模式识别的方法正确地对来自不同手腕位置的手部运动进行分类的能力尚未得到很好的研究。在这项研究中,针对偏手截肢者,我们评估(1)非线性和线性模式识别算法的性能,以及(2)用于对不同手腕位置的四个手部运动类别进行分类的最佳EMG特征子集的性能, 16名非截肢者和4名截肢者。我们的结果表明,对于非被截肢者和部分被截肢者,线性判别分析以及线性和非线性人工神经网络的性能明显优于二次判别分析。对于被截肢者,包括来自多个腕部位置的信息,误差显着降低(p≤0.001),但当包括4个,2个或3个以上的外部位置时,误差没有进一步显着降低(p≥0.07),内在的(p?=?0.06),或外在和内在的肌电肌电结合(p?=?0.08)。最后,我们发现,通过从每个通道中选择最佳特征确定的特征集优于常用的时域(p 0.001)和时域/自回归特征集(p 0.01)。此方法可用作筛选过滤器,以从每个通道中选择特征,以在不同手腕位置上提供最佳手部姿势分类。

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