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To Explore the Potentials of Independent Component Analysis in Brain-Computer Interface of Motor Imagery

机译:探讨电动机图像脑电器界面独立分量分析的潜力

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This paper is focused on the experimental approach to explore the potential of independent component analysis (ICA) in the context of motor imagery (MI)-based brain-computer interface (BCI). We presented a simple and efficient algorithmic framework of ICA-based MI BCI (ICA-MIBCI) for the evaluation of four classical ICA algorithms (Infomax, FastICA, Jade, and Sobi) as well as a simplified Infomax (sInfomax). Two novel performance indexes, self-test accuracy and the number of invalid ICA filters, were employed to assess the performance of MIBCI based on different ICA variants. As a reference method, common spatial pattern (CSP), a commonly-used spatial filtering method, was employed for the comparative study between ICA-MIBCI and CSP-MIBCI. The experimental results showed that sInfomax-based spatial filters exhibited significantly better transferability in session to session and subject to subject transfer as compared to CSP-based spatial filters. The online experiment was also introduced to demonstrate the practicability and feasibility of sInfomax-based MIBCI. However, four classical ICA variants, especially FastICA, Jade, and Sobi, performed much worse as compared to sInfomax and CSP in terms of classification accuracy and stability. We consider that conventional ICA-based spatial filtering methods tend to be overfitting while applied to real-life electroencephalogram data. Nevertheless, the sInfomax-based experimental results indicate that ICA methods have a great space for improvement in the application of MIBCI. We believe that this paper could bring forth new ideas for the practical implementation of ICA-MIBCI.
机译:本文重点是探讨在电机图像(MI)的脑电接口(BCI)的上下文中探索独立分量分析(ICA)的实验方法。我们介绍了基于ICA的MI BCI(ICA-MIBCI)的简单有效的算法框架,用于评估四种经典ICA算法(InfoMax,Fastica,Jade和Sobi)以及简化的InfoMax(Sinfomax)。采用两种新颖性能指标,自测准确性和无效的ICA过滤器数量,以评估基于不同ICA变体的MIBCI的性能。作为参考方法,使用常见的空间模式(CSP),一种共同使用的空间滤波方法,用于ICA-MIBCI和CSP-MIBCI之间的比较研究。实验结果表明,与基于CSP的空间滤波器相比,Sinfomax的空间滤波器在会话中表现出明显更好的转移性,并受试者转移。还介绍了在线实验以证明基于Sinfomax的MiBCi的实用性和可行性。然而,与Sinfomax和CSP在分类准确性和稳定性方面相比,四种古典ICA变体,特别是Fastica,Jade和Sobi进行了更糟糕的方式。我们认为,常规的基于ICA的空间过滤方法倾向于过度拟合,同时应用于现实寿命脑电图数据。然而,基于Sinfomax的实验结果表明,ICA方法具有巨大的应用空间,以改善MIBCI的应用。我们认为,本文可以带来新的思路,以实现ICA-MIBCI的实际实施。

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