首页> 外文会议>2016 5th International Conference on Wireless Networks and Embedded Systems >Characterization of classifier performance on left and right limb motor imagery using support vector machine classification of EEG signal for left and right limb movement
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Characterization of classifier performance on left and right limb motor imagery using support vector machine classification of EEG signal for left and right limb movement

机译:使用支持向量机对左右肢运动进行脑电信号分类,表征左右肢运动图像上的分类器性能

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This work proposes an algorithm that automatically classifies electroencephalography(EEG) signal formovement of left and right hands using time domain and information theoretic features like Power Spectral Density (PSD) and Shannon Entropy with the use of support vector machine. Brain-computer interfacing (BCI) has gained momentumover the last few decades and has emerged as a promising field by providing a real time platformfor interaction between brain and automated devices which can be used for rehabilitative purposes.BCI provides considerable help in overcoming sensorimotor disabilities.The EEG recordings of left and right motorimagery are identical to the actualmovement of the corresponding left and right limbs. Support Vector Machine (SVM) provides anaccuracy of 91.25% thereby reaffirming its efficiency in classification of EEG signals.
机译:这项工作提出了一种算法,该算法使用时域和信息理论特征(如功率谱密度(PSD)和香农熵)通过支持向量机自动对左手和右手的脑电信号进行分类。在过去的几十年中,脑机接口(BCI)取得了长足的发展,并通过提供可用于康复目的的大脑与自动设备之间的实时交互平台而成为一个有前途的领域.BCI在克服感觉运动障碍方面提供了巨大的帮助。左右运动图像的脑电图记录与相应的左右肢体的实际运动相同。支持向量机(SVM)提供91.25%的准确性,从而重申了其在EEG信号分类中的效率。

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