IEEE Trans Biomed Eng. 2022 Feb;69(2):807-817. doi: 10.1109/TBME.2021.3105912. Epub 2022 Jan 20.
This paper tackles the cross-sessions variability of electroencephalography-based brain-computer interfaces (BCIs) in order to avoid the lengthy recalibration step of the decoding method before every use.
We develop a new approach of domain adaptation based on optimal transport to tackle brain signal variability between sessions of motor imagery BCIs. We propose a backward method where, unlike the original formulation, the data from a new session are transported to a calibration session, and thereby avoiding model retraining. Several domain adaptation approaches are evaluated and compared. We simulated two possible online scenarios: i) block-wise adaptation and ii) sample-wise adaptation. In this study, we collect a dataset of 10 subjects performing a hand motor imagery task in 2 sessions. A publicly available dataset is also used.
For the first scenario, results indicate that classifier retraining can be avoided by means of our backward formulation yielding to equivalent classification performance as compared to retraining solutions. In the second scenario, classification performance rises up to 90.23% overall accuracy when the label of the indicated mental task is used to learn the transport. Adaptive time is between 10 and 80 times faster than the other methods.
The proposed method is able to mitigate the cross-session variability in motor imagery BCIs.
The backward formulation is an efficient retraining-free approach built to avoid lengthy calibration times. Thus, the BCI can be actively used after just a few minutes of setup. This is important for practical applications such as BCI-based motor rehabilitation.
本文旨在解决基于脑电图的脑机接口(BCI)在跨会话中的变异性问题,以避免在每次使用前对解码方法进行冗长的重新校准。
我们开发了一种基于最优传输的新域自适应方法,以解决运动想象BCI 会话之间的脑信号变异性问题。我们提出了一种反向方法,与原始公式不同,新会话的数据被传输到校准会话,从而避免了模型的重新训练。评估并比较了几种域自适应方法。我们模拟了两种可能的在线场景:i)块自适应和 ii)样本自适应。在这项研究中,我们收集了 10 名受试者在 2 个会话中执行手部运动想象任务的数据。还使用了一个公开可用的数据集。
对于第一种情况,结果表明,通过我们的反向公式可以避免分类器的重新训练,从而与重新训练的解决方案相比,分类性能相当。在第二种情况下,当使用指示心理任务的标签来学习传输时,分类性能提高到总体准确率 90.23%。自适应时间比其他方法快 10 到 80 倍。
所提出的方法能够减轻运动想象 BCI 中的跨会话变异性。
反向公式是一种高效的无重新训练方法,旨在避免漫长的校准时间。因此,BCI 可以在几分钟的设置后立即积极使用。这对于基于 BCI 的运动康复等实际应用非常重要。