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Low-complexity EEG-based eye movement classification using extended moving difference filter and pulse width demodulation

机译:基于低复杂度EEG的眼动分类,使用扩展的移动差分滤波器和脉冲宽度解调

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This paper presents an eye movement classification algorithm for EEG-based brain-computer interface. The proposed system first used a low-complexity extended moving difference filter to acquire clean pulse waveform of eye-movement events. Then, a pulse width demodulation algorithm was designed to identify eye-movement events of left/right/up/down directions. The eye blinking events can be easily eliminated by excluding the pulses with small pulse-width, and thus the detection rate can be improved. Besides, the pulse width demodulation requires only addition operations to achieve a near 90% averaged detection. The computation complexity is much lower than those of other works in the literature.
机译:本文提出了一种基于脑电图的脑机接口的眼动分类算法。所提出的系统首先使用低复杂度扩展运动差分滤波器来获取眼动事件的干净脉冲波形。然后,设计了一种脉宽解调算法,以识别左/右/上/下方向的眼睛运动事件。通过排除脉宽小的脉冲,可以容易地消除眨眼的情况,因此可以提高检测率。此外,脉冲宽度解调仅需要加法运算即可实现接近90%的平均检测。计算复杂度比文献中的其他工作要低得多。

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