眨眼检测的脑电信号处理模型

Sebastián Poveda Zavala, Kelvin Ortíz Chicaiza, José Luis Pérez López, J. Ramírez, S. Yoo
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引用次数: 2

摘要

脑电图设备,如OpenBCI细胞生物传感板,创造了一种非侵入性和廉价的方式来获取大脑产生的信号。这些信号受到不同类型的大脑刺激的影响,如眨眼,但它们也包括大量的噪音,例如由板产生的噪音。然而,在经过验证的滤波器的帮助下,噪声可以被去除。在这方面,这项工作的目的是展示如何使用不同类型的过滤器,可以从使用脑电图设备(如细胞生物传感板)获得的大脑信号中清除噪声,这些信号是在用户眨眼时产生的,并将它们分类为不同类型的眨眼。我们选择了对眨眼大脑信号的研究,因为它们在现实生活中有着广泛的应用。我们的模型包括一个简单的算法,将用户产生的眨眼分为短暂的故意眨眼和长时间的故意眨眼。所提出模型的实验结果显示,准确率为96%,可以开发不需要实时控制的现实应用,如物联网设备。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EEG Signal Processing Model for Eye Blink Detection
: Electroencephalography devices such as the OpenBCI Cyton Biosensing board create a noninvasive and inexpensive way of acquiring signals generated by the brain. These signals are influenced by different types of brain stimuli such as eye blinks but they are also includes a large amount of noise, e.g., generated by the board. However, the noise can be removed with the help of proven filters. In this aspect, the intention of this work is to demonstrate how using different type of filters, it is possible to clean the noise from the brain signals acquired using an encephalography devices (such as Cytonbiosensing board) which are generated when a user blinks his/her eyes and classify them in different type of blinks. We have chosen the study of eye blink brain signals, since, they present a wide range of real-life applications. Our model includes a simple algorithm that classifies user-generated eye blinks into short intended blinks and long composed blinks. Experimental results of the proposed model show an accuracy of 96% which enables the development of real-life applications that do not require real-time control such as IoT devices.
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