A review of recent trends in EEG based Brain-Computer Interface

P. Lahane, Jay Jagtap, Aditya Inamdar, Nihal Karne, Ritwik Dev
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引用次数: 19

Abstract

In recent times, the advancements in Brain-Computer Interface has not only been instrumental in achieving its fundamental purpose of aiding disabled people, but also in creating novel applications like playing games without physical controls or operating home appliances merely by the power of your brain. The electrical activity generated in the brain is measured by an EEG device after which the collected raw data undergoes through various steps, namely: Signal acquisition, Data Preprocessing, Feature Extraction, and Classification. This paper helps the reader in understanding the different algorithms and methods used in each of these processes. A detailed survey of various applications of BCI using different feature extraction and classification techniques is done. Finally, we have compiled all the current issues which hinder the efficiency of BCI systems.
基于脑电图的脑机接口研究进展综述
近年来,脑机接口的进步不仅有助于实现其帮助残疾人的基本目的,而且还有助于创造新的应用,如玩游戏时无需物理控制或仅凭大脑的力量操作家用电器。脑电活动由EEG设备测量,采集到的原始数据经过信号采集、数据预处理、特征提取、分类等步骤。本文帮助读者理解这些过程中使用的不同算法和方法。详细介绍了脑机接口在不同特征提取和分类技术中的应用。最后,我们整理了目前影响BCI系统效率的所有问题。
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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