首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >SEMG-based hand motion recognition using cumulative residual entropy and extreme learning machine.
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SEMG-based hand motion recognition using cumulative residual entropy and extreme learning machine.

机译:基于SEMG的手运动识别,使用累积残差熵和极限学习机。

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摘要

This paper proposes a scheme consisting of two novel components to recognize multiple hand motions from surface electromyography (SEMG). First, we use the cumulative residual entropy (CREn), a measure of uncertainty in a random variable, as the feature. Second, we employ the extreme learning machine (ELM), a fast and effective classifier using single-hidden layer feedforward neural network with additive neurons, to distinguish different motions. To evaluate performance of the proposed system, we compare CREn with fuzzy entropy, sample entropy, and approximate entropy, and a state-of-the-art time-domain feature; and ELM with linear discriminant analysis and support vector machine. They are tested on four channel SEMG signals acquired from ten normal subjects. Experimental results indicate that the classification accuracies of CREn are not only better than those of other entropies with all the classifiers, but also comparable to the time-domain feature for all the segment lengths of 200, 250 and 1,000 ms with all classifiers that are evaluated. Furthermore, the computational complexity of CREn is lower than those of other features, and ELM performs significantly faster than other classifiers without sacrificing any performance. It suggests that the proposed CREn-ELM scheme has the potential to be applied to real-time control of SEMG-based multifunctional prosthesis.
机译:本文提出了一种方案,该方案由两个新颖的组件组成,可以从表面肌电图(SEMG)识别多个手部动作。首先,我们使用累积残差熵(CREn)作为特征,它是对随机变量中不确定性的一种度量。其次,我们使用极限学习机(ELM),这是一种快速有效的分类器,它使用具有加性神经元的单隐藏层前馈神经网络来区分不同的运动。为了评估所提出系统的性能,我们将CREn与模糊熵,样本熵和近似熵以及最新的时域特征进行了比较。和带有线性判别分析和支持向量机的ELM。在从十名正常受试者获取的四通道SEMG信号上对它们进行了测试。实验结果表明,对于所有分类器,CREn的分类精度不仅优于其他熵,而且与所有评估器评估的所有长度为200、250和1,000 ms的时域特征相比,其时域特征也相当。此外,CREn的计算复杂度低于其他功能,并且ELM的执行速度明显快于其他分类器,而不会牺牲任何性能。这表明所提出的CREn-ELM方案有可能应用于基于SEMG的多功能假体的实时控制。

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