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Application of Wiener Deconvolution Model in P300 Spelling Paradigm

机译:维纳反卷积模型在P300拼写范例中的应用

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Spelling paradigm first introduced by Farwell and Donchin, is one of the brain computer interface (BCI) applications that enables paralyzed people to communicate with their environment. In such a problem, user needs to focus on the characters which are randomly flashed row or column-wise on the computer screen in a small period of time. The accuracy in spelling words is the main problem in this scheme and the duration of the correct prediction is quite important. The purpose of this work is twofold: to analyze a user specific response to a spelling paradigm system considering the optimal frequency bands for P300 detection, and secondly to investigate the classification performance for the perception of row and columnwise flashings in the spelling system. The preprocessing is performed with Wiener deconvolution model (WDM) and optimal filters for user specific system is constructed. The proposed algorithm is applied to dataset IIb of BCI competition 2003 and the words for training and testing sets are predicted with 100% accuracy after first 4 trials, as compared to other winning algorithms (100% accuracy in 5 repetitions) of the competition. Furthermore, our classification results show that perception to row and column flashings may differ considerably.
机译:拼写范例由Farwell和Donchin首次提出,是使瘫痪者与周围环境进行交流的大脑计算机接口(BCI)应用程序之一。在这样的问题中,用户需要在短时间内关注在计算机屏幕上随机地以行或列方式闪烁的字符。拼写单词的准确性是该方案中的主要问题,正确预测的持续时间非常重要。这项工作的目的是双重的:分析针对拼写范例系统的用户特定响应,其中考虑了用于P300检测的最佳频带;其次,调查了针对拼写系统中行闪烁和列闪烁的感知的分类性能。使用维纳反卷积模型(WDM)进行预处理,并为用户特定的系统构建最佳滤波器。所提出的算法应用于2003年BCI竞赛的数据集IIb,与其他竞赛的获胜算法(5次重复的100%准确性)相比,在前4次试验后,用于训练和测试集的单词的预测准确性为100%。此外,我们的分类结果表明,对行和列闪烁的感知可能有很大差异。

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