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A Maxmin Approach to Optimize Spatial Filters for EEG Single-Trial Classification

机译:一种针对脑电图单次分类优化空间滤波器的Maxmin方法

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摘要

Electroencephalographic single-trial analysis requires methods that are robust with respect to noise, artifacts and non-stationarity among other problems. This work contributes by developing a maxmin approach to robustify the common spatial patterns (CSP) algorithm. By optimizing the worst-case objective function within a prefixed set of the covariance matrices, we can transform the respective complex mathematical program into a simple generalized eigenvalue problem and thus obtain robust spatial filters very efficiently. We test our maxmin CSP method with real world brain-computer interface (BCI) data sets in which we expect substantial fluctuations caused by day-to-day or paradigm-to-paradigm variability or different forms of stimuli. The results clearly show that the proposed method significantly improves the classical CSP approach in multiple BCI scenarios.
机译:脑电图单次试验分析需要在噪声,伪影和非平稳性等方面都比较可靠的方法。这项工作通过开发maxmin方法来增强通用空间模式(CSP)算法而做出了贡献。通过在协方差矩阵的前缀集中优化最坏情况的目标函数,我们可以将各个复杂的数学程序转换为一个简单的广义特征值问题,从而非常有效地获得鲁棒的空间滤波器。我们使用现实世界的脑机接口(BCI)数据集测试我们的maxmin CSP方法,在该数据集中,我们预期由日常或范式到范式的可变性或不同形式的刺激引起的巨大波动。结果清楚地表明,所提出的方法在多个BCI场景中显着改进了经典CSP方法。

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  • 来源
  • 会议地点 Salamanca(ES);Salamanca(ES)
  • 作者单位

    IDA group, FIRST, Fraunhofer Institute, Kekulestr. 7 12489 Berlin, Germany Berlin Institute of Technology, Computer Science Faculty, Machine Learning department, Franklinstr. 28/29 10587 Berlin, Germany;

    Berlin Institute of Technology, Computer Science Faculty, Machine Learning department, Franklinstr. 28/29 10587 Berlin, Germany;

    IDA group, FIRST, Fraunhofer Institute, Kekulestr. 7 12489 Berlin, Germany Berlin Institute of Technology, Computer Science Faculty, Machine Learning department, Franklinstr. 28/29 10587 Berlin, Germany;

    Berlin Institute of Technology, Computer Science Faculty, Machine Learning department, Franklinstr. 28/29 10587 Berlin, Germany;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 人工智能理论;
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