利用脑电信号对拇指、食指和中指伸屈位置进行分类

F. M. Joseph, S. Gupta, Chetanya Rastogi, Rahul Ratan Mirdha, Ankita Puwar, Utkarsh Maheshwari, Aman Pahariya, A. De, Vishrut Kumar Mishra
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引用次数: 2

摘要

本文的主要目的是利用脑电信号对拇指、食指和中指的伸屈位置进行分类。记录受试者的脑电图信号,并将其用于前馈神经网络的离线训练,该网络用于学习脑电图与手指运动之间的关系。在10个通道的EEG信号中,每个样本提取了6个特征,即来自大脑10个不同区域的信号。对这10个通道的数据进行分析,发现了一些重要的通道,然后选择这些通道进行特征提取和神经网络的训练。观察表明,这三个手指的屈伸位置分类成功。这个想法可以进一步发展,将这些分类位置结合起来,使用手指外骨骼来执行物体平移和旋转等任务。
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Classification of extension and flexion positions of thumb, index and middle fingers using EEG Signal
The primary aim of the piece of work is to classify the extension and flexion positions of thumb, index finger and middle finger by the use of EEG Signal. The EEG Signal of a human subject is recorded and used for offline training of a feedforward neural network which is used to learn the relation between EEG and finger motion. Six features have been extracted per sample of EEG signal over 10 channels, that is, signal from 10 different regions of the brain. Analysis of the data from these 10 channels revealed a certain few important channels which have been then selected for feature extraction and training of neural network. Observations show that flexion and extension positions of these three fingers are classified successfully. This idea can be developed further to combine these classified positions to perform tasks such as object translation and rotation using a finger exoskeleton.
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