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Peak Detection with Online Electroencephalography (EEG) Artifact Removal for Brain–Computer Interface (BCI) Purposes

机译:在线脑电图(EEG)伪影去除峰用于脑机接口(BCI)的目的

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摘要

Brain–computer interfaces (BCIs) measure brain activity and translate it to control computer programs or external devices. However, the activity generated by the BCI makes measurements for objective fatigue evaluation very difficult, and the situation is further complicated due to different movement artefacts. The BCI performance could be increased if an online method existed to measure the fatigue objectively and accurately. While BCI-users are moving, a novel automatic online artefact removal technique is used to filter out these movement artefacts. The effects of this filter on BCI performance and mainly on peak frequency detection during BCI use were investigated in this paper. A successful peak alpha frequency measurement can lead to more accurately determining objective user fatigue. Fifteen subjects performed various imaginary and actual movements in separate tasks, while fourteen electroencephalography (EEG) electrodes were used. Afterwards, a steady-state visual evoked potential (SSVEP)-based BCI speller was used, and the users were instructed to perform various movements. An offline curve fitting method was used for alpha peak detection to assess the effect of the artefact filtering. Peak detection was improved by the filter, by finding 10.91% and 9.68% more alpha peaks during simple EEG recordings and BCI use, respectively. As expected, BCI performance deteriorated from movements, and also from artefact removal. Average information transfer rates (ITRs) were 20.27 bit/min, 16.96 bit/min, and 14.14 bit/min for the (1) movement-free, (2) the moving and unfiltered, and (3) the moving and filtered scenarios, respectively.
机译:脑机接口(BCI)可以测量脑活动并将其转化为控制计算机程序或外部设备。然而,由BCI产生的活动使用于客观疲劳评估的测量非常困难,并且由于运动伪影的不同,情况更加复杂。如果存在一种客观,准确地测量疲劳的在线方法,则可以提高BCI性能。当BCI用户移动时,一种新颖的在线人工制品自动清除技术被用来过滤掉这些运动制品。本文研究了该滤波器对BCI性能的影响,主要是对BCI使用过程中峰值频率检测的影响。成功的峰值α频率测量可以导致更准确地确定客观用户疲劳。 15名受试者在单独的任务中执行了各种虚构和实际动作,而使用了14台脑电图(EEG)电极。之后,使用基于稳态视觉诱发电位(SSVEP)的BCI拼写器,并指示用户执行各种动作。离线曲线拟合方法用于alpha峰检测,以评估伪影过滤的效果。通过在简单的EEG记录和使用BCI的过程中分别发现分别多出10.91%和9.68%的alpha峰,滤波器改善了峰检测。不出所料,BCI的性能由于移动以及人工制品的去除而变差。对于(1)不移动,(2)移动和未过滤以及(3)移动和过滤的情况,平均信息传输速率(ITR)为20.27位/分钟,16.96位/分钟和14.14位/分钟。分别。

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