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首页> 外文期刊>EURASIP journal on advances in signal processing >Time-frequency optimization for discrimination between imagination of right and left hand movements based on two bipolar electroencephalography channels
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Time-frequency optimization for discrimination between imagination of right and left hand movements based on two bipolar electroencephalography channels

机译:基于两个双极脑电图通道的时频优化,以区分左右手的动作

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摘要

To enforce a widespread use of efficient and easy to use brain-computer interfaces (BCIs), the inter-subject robustness should be increased and the number of electrodes should be reduced. These two key issues are addressed in this contribution, proposing a novel method to identify subject-specific time-frequency characteristics with a minimal number of electrodes. In this method, two alternative criteria, time-frequency discrimination factor (TFDF) and F score, are proposed to evaluate the discriminative power of time-frequency regions. Distinct from classical measures (e.g., Fisher criterion, r2 coefficient), the TFDF is based on the neurophysiologic phenomena, on which the motor imagery BCI paradigm relies, rather than only from statistics. F score is based on the popular Fisher’s discriminant and purely data driven; however, it differs from traditional measures since it provides a simple and effective measure for quantifying the discriminative power of a multi-dimensional feature vector. The proposed method is tested on BCI competition IV datasets IIa and IIb for discriminating right and left hand motor imagery. Compared to state-of-the-art methods, our method based on both criteria led to comparable or even better classification results, while using fewer electrodes (i.e., only two bipolar channels, C3 and C4). This work indicates that time-frequency optimization can not only improve the classification performance but also contribute to reducing the number of electrodes required in motor imagery BCIs.
机译:为了强制广泛使用高效且易于使用的脑机接口(BCI),应提高受试者间的鲁棒性,并减少电极的数量。这两个关键问题在本贡献中得到了解决,提出了一种新颖的方法,可以用最少的电极来识别对象特定的时频特性。在该方法中,提出了两个替代标准,即时频判别因子(TFDF)和F分数,以评估时频区域的判别力。 TFDF与经典量度(例如Fisher准则,r2系数)不同,它基于神经生理现象,而运动图像BCI范本是这种神经生理现象所依赖的,而不是仅基于统计数据。 F分数是基于流行的Fisher判别式和纯数据驱动的;但是,它与传统方法不同,因为它提供了一种简单有效的方法来量化多维特征向量的判别力。在BCI竞赛IV数据集IIa和IIb上测试了该方法,以区分左右手运动图像。与最先进的方法相比,我们基于这两个标准的方法可产生可比甚至更好的分类结果,同时使用更少的电极(即仅两个双极通道C3和C4)。这项工作表明,时频优化不仅可以提高分类性能,而且可以减少运动图像BCI中所需的电极数量。

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