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首页> 外文期刊>Neural Systems and Rehabilitation Engineering, IEEE Transactions on >Correlation Analysis of Electromyogram Signals for Multiuser Myoelectric Interfaces
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Correlation Analysis of Electromyogram Signals for Multiuser Myoelectric Interfaces

机译:多用户肌电接口肌电信号的相关性分析

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摘要

An inability to adapt myoelectric interfaces to a novel user's unique style of hand motion, or even to adapt to the motion style of an opposite limb upon which the interface is trained, are important factors inhibiting the practical application of myoelectric interfaces. This is mainly attributed to the individual differences in the exhibited electromyogram (EMG) signals generated by the muscles of different limbs. We propose in this paper a multiuser myoelectric interface which easily adapts to novel users and maintains good movement recognition performance. The main contribution is a framework for implementing style-independent feature transformation by using canonical correlation analysis (CCA) in which different users' data is projected onto a unified-style space. The proposed idea is summarized into three steps: 1) train a myoelectric pattern classifier on the set of style-independent features extracted from multiple users using the proposed CCA-based mapping; 2) create a new set of features describing the movements of a novel user during a quick calibration session; and 3) project the novel user's features onto a lower dimensional unified-style space with features maximally correlated with training data and classify accordingly. The proposed method has been validated on a set of eight intact-limbed subjects, left-and-right handed, performing ten classes of bilateral synchronous fingers movements with four electrodes on each forearm. The method was able to overcome individual differences through the style-independent framework with accuracies of $>$83% across multiple users. Testing was also performed on a set of ten intact-limbed and six below-elbow amputee subjects as they performed finger and thumb movements. The proposed framework allowed us to train the classifier on a normal subject's data while subsequently testing it on an amputee's data after calibration with a performa- ce of $>$82% on average across all amputees.
机译:无法使肌电接口适应新的用户独特的手部动作风格,或者甚至不能适应对其进行训练的对侧肢体的运动风格,是阻碍肌电接口实际应用的重要因素。这主要归因于不同肢体肌肉产生的所显示的肌电图(EMG)信号的个体差异。我们在本文中提出了一种多用户肌电接口,该接口易于适应新用户并保持良好的运动识别性能。主要贡献是通过使用规范相关分析(CCA)实现与样式无关的特征转换的框架,在该框架中,将不同用户的数据投影到统一样式空间中。所提出的思想概括为三个步骤:1)使用所提出的基于CCA的映射,在从多个用户提取的与样式无关的特征集上训练肌电模式分类器; 2)创建一组描述新用户在快速校准会话期间的运动的功能; 3)将新用户的特征投影到具有与训练数据最大相关的特征的低维统一样式空间上,并进行相应的分类。所提出的方法已在一组八个完整肢体受试者(左手和右手)上进行了验证,该受试者执行了十类双侧同步手指运动,每个前臂上有四个电极。该方法能够通过独立于样式的框架克服个体差异,跨多个用户的准确度为$> $ 83%。还对十名完整肢体和六个肘部以下截肢者受试者进行手指和拇指的运动进行了测试。提出的框架使我们能够在正常受试者的数据上训练分类器,然后在校准后在被截肢者的数据上对分类器进行测试,所有被截肢者的平均表现为$> $ 82%。

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