A Visual Keyboard System Using Hybrid Dual Frequency SSVEP Based Brain Computer Interface with VOG Integration

D. Saravanakumar, M. Reddy
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引用次数: 3

Abstract

The focus of this paper is to increase the number of targets and classification rate in the SSVEP-BCI visual keyboard system. The dual frequency steady state visual evoked potential (SSVEP) and video-oculography (VOG) based hybrid system has been developed in this study. The visual stimuli (targets) were designed using dual frequency SSVEP method. This method could create more targets through a suitable combination of limited number of frequencies. The keyboard screen was divided into three sections (left, middle and right), and each section visual stimuli/keys were designed with a unique set of frequencies. The webcam based video-oculography was used to detect the direction of the eye gaze. This selection reduces the issue of misclassification of SSVEP frequencies. Extended multivariate synchronization index (EMSI) method is used for SSVEP frequency recognition. Both online and offline experiments were conducted on 10 subjects and an average online detection accuracy of 94.987% was obtained with the information transfer rate (ITR) of 82.786 bits/minutes.
基于混合双频SSVEP的脑机接口VOG集成视觉键盘系统
本文的研究重点是提高SSVEP-BCI视觉键盘系统的目标数量和分类率。本研究开发了基于双频稳态视觉诱发电位(SSVEP)和视频视觉成像(VOG)的混合系统。采用双频SSVEP方法设计视觉刺激(目标)。这种方法可以通过有限频率的适当组合来创建更多的目标。键盘屏幕分为左、中、右三个部分,每个部分的视觉刺激/按键都设计了一组独特的频率。采用基于网络摄像头的视频视觉技术检测眼球注视方向。这种选择减少了SSVEP频率的错误分类问题。扩展多元同步索引(EMSI)方法用于SSVEP频率识别。对10名受试者进行了在线和离线实验,平均在线检测准确率为94.987%,信息传输速率(ITR)为82.786 bits/min。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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