利用Viola-jones算法对脑机接口进行完善的睡意检测

Md. Kamrul Hasan, S. Ullah, S. Gupta, Mohiudding Ahmad
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引用次数: 2

摘要

安全和侦察应用是突出的脑机接口范例,如果脑电图(EEG)信号没有污染,则不那么复杂和复杂。脑电信号质量越好,脑机接口范式的性能越好(信息传输率(ITR)、信噪比(SNR)、带宽(BW)等)。睡意是脑电图信号的主要污染之一,影响着现代脑机接口模式的正常运行。在本研究中,采用非侵入式机器视觉的概念来判断患者的困倦状态,保证了无困倦的脑电图信号。在这个系统中,一个摄像头的放置方式可以记录受试者(BCI用户)每次的眼球运动,并可以监控眼睛的睁眼和闭眼状态。Viola-jones算法既适用于人脸检测,也适用于眼睛状态(睁眼、闭眼或半睁眼)的检测,这是从患者脑电图信号中检测睡意的关键。在检测到这种睡意后,可以很容易地决定BCI的完美运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Drowsiness detection for the perfection of brain computer interface using Viola-jones algorithm
Security and reconnaissance applications are prominent BCI paradigms which are less complex and sophisticated if there is no contamination in Electroencephalogram (EEG) signal. The better the quality of EEG signal ensures the better the performance (better Information Transfer Rate (ITR), high Signal to Noise Ratio (SNR), high Bandwidth (BW), and so on) of BCI paradigms. Drowsiness is one of the major contamination in EEG signal that hampers the operation of modern BCI paradigms. In this research, a non-intrusive machine vision based concept is used to determine the drowsiness from the patient which ensure the drowsy free EEG signal. In this proposed system, a camera which placed in a way that it records subjects (BCI Users) eye movement in every time as well as it can monitor the open and close state of eye. Viola-jones Algorithm is applicable for the detection of face as well as state of eye (Open, closed or semi-open) which is the key concern for the detection of drowsiness from the patient's EEG signal. After detecting this drowsiness, decision can be easily made for the perfect operation of BCI.
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