用主成分分析和支持向量机对肌电信号进行相机控制

M. S. Erkılınç, F. Sahin
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引用次数: 29

摘要

人机界面(HCI)的主要目标是通过使计算机更易于使用和接受用户的需求来改善用户和计算机之间的交互。因此,监控是人机界面至关重要的主要领域之一。监控摄像机通常用操纵杆控制。由于这个原因,一个没有手指功能的截肢者几乎不可能控制它。本文首先对原始肌电数据进行快速傅里叶变换(FFT)分析,然后利用主成分分析(PCA)和简单主成分分析(SPCA)提取特征。在该系统中,为了判断手腕是右、左、上、下运动还是中立运动,采用了多类支持向量机。除了肌电图(Electromyography, EMG)信号外,还对涉及脑电图(Electroencephalography, EEG)信号的标准数据集进行了多类支持向量机测试,以验证系统的鲁棒性。最后,分类的肌电图决定被相机接收为运动评论。利用肌电信号的相机在SPCA下成功运行,准确率达到81%。
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Camera control with EMG signals using Principal Component Analysis and support vector machines
The main goal of Human Computer Interface (HCI) is to improve the interactions between users and computers by making computers more usable and receptive to the user's needs. Accordingly, surveillance is one of the major areas where human computer interface is critical. Surveillance cameras are usually controlled with joysticks. For this reason, it is almost impossible to be controlled by an amputee with no finger functionality. In this paper, the Fast Fourier Transform (FFT) analysis was applied to raw EMG data and then features are extracted with Principal Component Analysis (PCA) and Simple Principal Component Analysis (SPCA). In the proposed system, in order to make a decision whether the wrist is moving right, left, up, down or neutral, multi-class Support Vector Machine is employed. Additionally to Electromyography (EMG) signals, standard datasets that involves Electroencephalography (EEG) signals is also tested with multi-class SVM to verify the system robustness. Finally, classified EMG decisions are received by the camera as movement comments. Successful operation of camera employing EMG signals has been accomplished with 81% accuracy with SPCA.
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