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BCI Competition IV – Data Set I: Learning Discriminative Patterns for Self-Paced EEG-Based Motor Imagery Detection

机译:BCI竞赛IV –数据集I:学习基于自定速度EEG的运动图像检测的判别模式

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摘要

Detecting motor imagery activities versus non-control in brain signals is the basis of self-paced brain-computer interfaces (BCIs), but also poses a considerable challenge to signal processing due to the complex and non-stationary characteristics of motor imagery as well as non-control. This paper presents a self-paced BCI based on a robust learning mechanism that extracts and selects spatio-spectral features for differentiating multiple EEG classes. It also employs a non-linear regression and post-processing technique for predicting the time-series of class labels from the spatio-spectral features. The method was validated in the BCI Competition IV on Dataset I where it produced the lowest prediction error of class labels continuously. This report also presents and discusses analysis of the method using the competition data set.
机译:检测运动图像活动与大脑信号的非控制是自定步调的计算机接口(BCI)的基础,但由于运动图像的复杂性和非平稳性以及对运动图像的复杂性和非平稳性,也给信号处理带来了巨大挑战非控制。本文提出了一种基于健壮的学习机制的自定进度BCI,该机制提取并选择了空间光谱特征以区分多个EEG类。它还采用非线性回归和后处理技术,以根据时空光谱特征预测类标签的时间序列。该方法在BCI数据集I竞争IV中得到验证,该方法连续产生最低的类标签预测误差。该报告还介绍并讨论了使用竞争数据集对该方法的分析。

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