Objective: Target identification in brain-computer interface (BCI) spellers refers to the electroencephalogram (EEG) classification for predicting the target character that the subject intends to spell. When the visual stimulus of each character is tagged with a distinct frequency, the EEG records steady-state visually evoked potentials (SSVEP) whose spectrum is dominated by the harmonics of the target frequency. In this setting, we address the target identification and propose a novel deep neural network (DNN) architecture. Method: The proposed DNN processes the multi-channel SSVEP with convolutions across the sub-bands of harmonics, channels, time, and classifies at the fully connected layer. We test with two publicly available large scale (the benchmark and BETA) datasets consisting of in total 105 subjects with 40 characters. Our first stage training learns a global model by exploiting the statistical commonalities among all subjects, and the second stage fine tunes to each subject separately by exploiting the individualities. Results: Our DNN achieves impressive information transfer rates (ITRs) on both datasets, 265.23 bits/min and 196.59 bits/min, respectively, with only 0.4 seconds of stimulation. The code is available for reproducibility at https://github.com/osmanberke/Deep-SSVEP-BCI. Conclusion: The presented DNN strongly outperforms the state-of-the-art techniques as our accuracy and ITR rates are the highest ever reported performance results on these datasets. Significance: Due to its unprecedentedly high speller ITRs and flawless applicability to general SSVEP systems, our technique has great potential in various biomedical engineering settings of BCIs such as communication, rehabilitation and control.
翻译:目标 : 大脑- 计算机界面( BCI) 拼写器中的目标识别 指的是用于预测对象要拼写的目标字符的电磁图( EEG) 分类 。 当每个字符的视觉刺激以不同频率标记时, EEG 记录了由目标频率的调和主导其频谱的稳态视觉引用潜力( SSVEP ) 。 在此环境下, 我们处理目标识别, 并提议一个全新的深层神经网络架构 。 方法 : 拟议的 DNNNE 处理多频道 SSVP, 与调音频、 频道、 时间和 完全连接层的分类。 我们用两种公开的大型数据集( 基准和 ETA) 进行测试, 共105个主题, 共40个字符。 我们的第一阶段培训通过利用所有主题之间的统计共性来学习一个全球模型, 以及每个主题的第二阶段微调调, 分别利用个人数据 。 结果: 我们的 DNNEW 实现令人印象深刻的信息传输率( ITRVER ) 在数据设置、 BBB / Streformldrodestration 系统里, 和 miss recregy 。