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Multiclass common spatial pattern with artifacts removal methodology for EEG signals

机译:多牌共同空间模式,具有eEG信号的伪影删除方法

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Common Spatial Pattern (SP) algorithm has been proved to be effective in Brain Computer Interface (BCI) for extracting features from Electroencephalogram (EEG) signals used in motor imagery tasks, but it is vulnerable to noise and the problem of over-fitting. Many algorithms have been devised to regularize CSP for two class problem, however they have not been effective when applied to multiclass CSP. The features extracted using the CSP are non-stationary in nature which increases the difficulty during classification. We propose a method to remove trials that are affected by noise before calculating the CSP. This helps in calculating eigenvectors which generates better CSP. To handle the non-stationarity in the EEG signal, Self-Regulated Interval Type-2 Neuro-Fuzzy Inference System (SRIT2NFIS) was proposed in the literature for two class EEG classification problem. This paper extends the SRIT2NFIS to Multiclass CSP using Joint Approximate Diagonalization (JAD). The results are presented on standard dataset.
机译:已经证明了常见的空间模式(SP)算法在脑电脑界面(BCI)中有效,用于从电动脑电图(EEG)信号中提取特征(EEG)信号,但它很容易受到噪音和过度拟合的问题。已经设计了许多算法来规范CSP两类问题,但是当应用于多字符CSP时,它们尚未生效。使用CSP提取的特征在性质中是非静止的,这增加了分类过程中的困难。我们提出了一种在计算CSP之前去除受噪声影响的试验的方法。这有助于计算生成更好CSP的特征向量。为了处理EEG信号中的非实用性,在文献中提出了自我调节的间隔类型-2神经模糊推理系统(SRIT2NFIS),在文献中提出了两个阶级EEG分类问题。本文使用关节近似对角线(JAD)将SRIT2NFI延伸到多字符CSP。结果显示在标准数据集上。

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