2008
DOI: 10.1088/1741-2560/5/2/006
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Sensorimotor rhythm-based brain–computer interface (BCI): model order selection for autoregressive spectral analysis

Abstract: People can learn to control EEG features consisting of sensorimotor rhythm amplitudes and can use this control to move a cursor in one or two dimensions to a target on a screen. Cursor movement depends on the estimate of the amplitudes of sensorimotor rhythms. Autoregressive models are often used to provide these estimates. The order of the autoregressive model has varied widely among studies. Through analyses of both simulated and actual EEG data, the present study examines the effects of model order on senso… Show more

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Cited by 159 publications
(109 citation statements)
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“…Every trial consisted of a cued task design with different task epochs. Each trial was initiated by a preparatory epoch, lasting for 2 s, followed by a MI epoch, lasting for 6 s, and completed by a rest period lasting for 6 s. During each trial, the regional oscillatory activity of the preceding 500 ms was estimated every 40 ms using an autoregressive model based on the Burg Algorithm with a model order of 32 (McFarland and Wolpaw, 2008). Participants were instructed to perform kinesthetic MI (Neuper et al, 2005) of right-hand opening, thus resulting in eventrelated desynchronization of β-oscillations (β-ERD) over contralateral sensorimotor electrodes (FC3, C3, and CP3) which were used for online classification.…”
Section: Data Acquisitionmentioning
confidence: 99%
“…Every trial consisted of a cued task design with different task epochs. Each trial was initiated by a preparatory epoch, lasting for 2 s, followed by a MI epoch, lasting for 6 s, and completed by a rest period lasting for 6 s. During each trial, the regional oscillatory activity of the preceding 500 ms was estimated every 40 ms using an autoregressive model based on the Burg Algorithm with a model order of 32 (McFarland and Wolpaw, 2008). Participants were instructed to perform kinesthetic MI (Neuper et al, 2005) of right-hand opening, thus resulting in eventrelated desynchronization of β-oscillations (β-ERD) over contralateral sensorimotor electrodes (FC3, C3, and CP3) which were used for online classification.…”
Section: Data Acquisitionmentioning
confidence: 99%
“…Во-вторых, сам пациент не имеет обратной связи от воображае-мого движения, что мешает ему контролировать собственные усилия. ИМК позволяет разрешить эти две проблемы, переводя биоэлектрическую актив-ность головного мозга в команды, управляющие различными устройствами [17,19]. Именно этот принцип, описанный ранее и опробованный на здо-ровых добровольцах, был заложен в основу исполь-зованного в исследовании реабилитационного био-инженерного комплекса «ИМК + экзоскелет» [15,20].…”
Section: Discussionunclassified
“…This paper claims that RBFNN is useful for real-time detection of attention-related ERP and thus can be an effective tool for the ERP amplitude and latency change estimation. Various feature extraction methods have been applied to obtain features from the EEG signals including adaptive autoregressive models (AAR) [11][12][13], common spatial filters [14,15] and wavelet transform [16 , 17].…”
Section: Imagination Of Movements Is Called Sensory Motor Rhythm (Smrmentioning
confidence: 99%