Steady-state visual evoked potential (SSVEP) recognition methods are equipped with learning from the subject's calibration data, and they can achieve extra high performance in the SSVEP-based brain-computer interfaces (BCIs), however their performance deteriorate drastically if the calibration trials are insufficient. This study develops a new method to learn from limited calibration data and it proposes and evaluates a novel adaptive data-driven spatial filtering approach for enhancing SSVEPs detection. The spatial filter learned from each stimulus utilizes temporal information from the corresponding EEG trials. To introduce the temporal information into the overall procedure, an multitask learning approach, based on the bayesian framework, is adopted. The performance of the proposed method was evaluated into two publicly available benchmark datasets, and the results demonstrated that our method outperform competing methods by a significant margin.
翻译:稳定状态的视觉发现潜力识别方法(SSVEP)配备了从对象校准数据中学习的方法,它们可以在以SSVEP为基础的脑计算机界面(BCIS)中取得超高性能,但如果校准试验不足,其性能就会急剧恶化。这项研究开发了一种新的方法,从有限的校准数据中学习,并提议和评价一种新的适应性数据驱动空间过滤方法,用于加强SSSVEP的检测。从每次刺激中学习的空间过滤器都利用相应的EEEG试验的时间信息。为了将时间信息引入整个程序,采用了以海湾框架为基础的多任务学习方法。拟议方法的性能被评价为两种公开的基准数据集,结果显示我们的方法在显著的幅度上优于相互竞争的方法。