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Time-Dependent Spectral Features for Limb Position Invariant Myoelectric Pattern Recognition

机译:用于肢体位置不变的肌电模式识别的时间依赖谱特征

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摘要

Recent studies on the myoelectric control of powered prosthetics revealed several factors that affect its clinical performance. One of the important factors is the variation in the limb position associated with normal use which can have a substantial impact on the robustness of Electromyogram (EMG) pattern recognition. To solve this problem, we propose in this paper a new feature extraction algorithm based on set of spectral moments that extracts the relevant information about the EMG power spectrum in an accurate and efficient manner. The main goal is to rely on effective knowledge discovery and pattern recognition methods to discover the neural information embedded in the EMG signals regardless of the limb position. Specifically, the proposed features define descriptive qualities for the general time domain-based characterization of the EMG spectral amplitude, spectral sparsity, and irregularity factor by the application of mathematical-statistical methods which also include frequency consideration. The performance of the proposed spectral moments is tested on EMG data collected from eight subjects, while implementing eight classes of movements, each at five different limb positions. Practical results indicate that training the classifier on the EMG moments collected from multiple positions and testing on completely unseen positions can achieve significant reduction in the classification error rates of upon ≈10% on average across all subjects and limb positions.
机译:最近关于动力假肢的肌电控制的研究显示了几种影响其临床表现的因素。其中一个重要因素是与正常使用相关的肢体位置的变化,这可以对电灰度(EMG)模式识别的鲁棒性具有显着影响。为了解决这个问题,我们在本文中提出了一种基于一组频谱矩的新特征提取算法,其以准确有效的方式提取有关EMG功率谱的相关信息。主要目标是依靠有效的知识发现和模式识别方法来发现无论肢体位置如何,发现嵌入在EMG信号中的神经信息。具体地,所提出的特征通过应用数学统计方法来定义基于常规时间域,光谱稀疏性和不规则性因子的一般时间域的表征的描述性质。所提出的光谱矩的性能在从八个受试者收集的EMG数据上测试,同时实现八种运动,每个运动在五个不同的肢体位置。实际结果表明,在从多个位置收集的EMG时刻训练分类器在完全看不见的位置上的测试中的测试可以在所有受试者和肢体位置平均地达到≈10%的分类误差率显着降低。

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