2019
DOI: 10.1177/1550059419842753
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Visual P300 Mind-Speller Brain-Computer Interfaces: A Walk Through the Recent Developments With Special Focus on Classification Algorithms

Abstract: Brain-computer interfaces are sophisticated signal processing systems, which directly operate on neuronal signals to identify specific human intents. These systems can be applied to overcome certain disabilities or to enhance the natural capabilities of human beings. The visual P300 mind-speller is a prominent one among them, which has opened up tremendous possibilities in movement and communication applications. Today, there exist many state-of-the-art visual P300 mind-speller implementations in the literatur… Show more

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Cited by 38 publications
(29 citation statements)
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“…Pre-processing P300 signals for classification requires extensive feature engineering, which can often be computationally intensive leading to slower response times [33]. In this work, we significantly reduce the pre-processing steps required for effective classification, and further, we completely eliminate domain transformations, which are typically used to learn salient P300 signal features.…”
Section: B Proposed Feature Selection Methodologymentioning
confidence: 99%
See 1 more Smart Citation
“…Pre-processing P300 signals for classification requires extensive feature engineering, which can often be computationally intensive leading to slower response times [33]. In this work, we significantly reduce the pre-processing steps required for effective classification, and further, we completely eliminate domain transformations, which are typically used to learn salient P300 signal features.…”
Section: B Proposed Feature Selection Methodologymentioning
confidence: 99%
“…Linear discriminant analysis (LDA) is the most common model used for P300 classification [33] The objective is to determine the classification probability, P (Y = y|X = x), of each input sample, x ∈ R d , where the output is given by y ∈ {0, 1} (corresponding to non-target and target classes, respectively) using Bayes' Theorem. Specifically, this is formulated by…”
Section: ) Linear Discriminant Analysis (Baseline Model)mentioning
confidence: 99%
“…Following the introduction of P300 speller in 1988 by Farwell and Donchin (1988), many studies have strived to improve this method (Fazel-Rezai et al, 2012;Allison et al, 2020;Philip and George, 2020). The speller performance is hindered by the necessity to run many trials to distinguish target and non-target stimuli based on the comparison of the event-related potentials (ERPs) they evoke.…”
Section: Introductionmentioning
confidence: 99%
“…Particularly, non-target items that are adjacent to the target attract attention and interfere with the decoding performance (Fazel-Rezai, 2007;Townsend et al, 2010). Several solutions to this problem have been explored, including using flashes of single items instead of flashing rows and columns (Guger et al, 2009), rearranging the spatial configuration of the simultaneously flashing stimuli (Townsend et al, 2010), suppressing the stimuli adjacent to targets (Frye et al, 2011), or all non-targets (Shishkin et al, 2011) during the calibration procedure, and optimizing the characteristics of visual stimuli (Salvaris and Sepulveda, 2009;Jin et al, 2017;Mainsah et al, 2017;Philip and George, 2020). Yet, all these approaches require a considerable amount of distracting stimuli for accurate spelling, which slows the decoding, and causes user fatigue (Boksem et al, 2005;Käthner et al, 2014;Oken et al, 2018).…”
Section: Introductionmentioning
confidence: 99%
“…Several studies have attempted to improve the spelling accuracy and speed of the P300 speller. However, its performance is still unable to meet the requirements of a real-world application (Kaufmann et al, 2011;Aya et al, 2018;Philip and George, 2020;Xu et al, 2020).…”
Section: Introductionmentioning
confidence: 99%