首页> 外文会议>Bioinformatics and Biomedicine, 2009. BIBM '09 >Using Forearm Electromyograms to Classify Hand Gestures
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Using Forearm Electromyograms to Classify Hand Gestures

机译:使用前臂肌电图对手势进行分类

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Prosthetic hands of increasing capability and sophistication are being built, but how does the user tell the hand what to do? One method is to use the low-level electrical signals associated with forearm muscle movement, or electrogmyograms (EMGs). This paper describes an experiment in which supervised learning, or classification, was used to build a model that decides which of a set of hand gestures was made by a subject based on forearm EMGs. Several techniques were employed to optimize the process. A neurological study was consulted to optimize sensor placement. Several classification algorithms were tried and those with the highest accuracy used. Finally, ANOVA was used to reduce the number of features while maintaining classifier accuracy. The results showed accuracies exceeding 90%, even with a reduced feature set, and that supervised learning has promise as a technique to control a prosthetic hand.
机译:人们正在建造具有增强功能和复杂性的假肢,但用户如何告诉该手怎么办?一种方法是使用与前臂肌肉运动或肌电图(EMG)相关的低电平电信号。本文描述了一个实验,其中使用监督学习或分类来构建一个模型,该模型决定对象基于前臂EMG做出的手势中的哪一个。采用了几种技术来优化过程。咨询了神经学研究以优化传感器的位置。尝试了几种分类算法,并使用了最高精度的分类算法。最后,在保持分类器准确性的同时,使用了ANOVA来减少特征数量。结果表明,即使减少了功能集,准确性也超过了90%,并且监督学习有望成为控制假手的一种技术。

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