Li Dian, Huang Yongzhi, Luo Ruixin, Zhao Lingjie, Xiao Xiaolin, Wang Kun, Yi Weibo, Xu Minpeng, Ming Dong
Tianjin International Joint Research Center for Neural Engineering, Academy of Medical Engineering and Translational Medicine, Tianjin University, Tianjin 300072, People's Republic of China.
Haihe Laboratory of Brain-computer Interaction and Human-machine Integration, Tianjin 300072, People's Republic of China.
J Neural Eng. 2025 Feb 14;22(1). doi: 10.1088/1741-2552/adb0f2.
. Steady-state visual evoked potential-based brain-computer interfaces (SSVEP-BCIs) have gained significant attention due to their simplicity, high signal to noise ratio and high information transfer rates (ITRs). Currently, accurate detection is a critical issue for enhancing the performance of SSVEP-BCI systems.This study proposed a novel decoding method called Discriminant Compacted Network (Dis-ComNet), which exploited the advantages of both spatial filtering and deep learning (DL). Specifically, this study enhanced SSVEP features using global template alignment and discriminant spatial pattern, and then designed a compacted temporal-spatio module (CTSM) to extract finer features. The proposed method was evaluated on a self-collected high-frequency dataset, a public Benchmark dataset and a public wearable dataset.The results showed that Dis-ComNet significantly outperformed state-of-the-art spatial filtering methods, DL methods, and other fusion methods. Remarkably, Dis-ComNet improved the classification accuracy by 3.9%, 3.5%, 3.2%, 13.3%, 17.4%, 37.5%, and 2.5% when comparing with eTRCA, eTRCA-R, TDCA, DNN, EEGnet, Ensemble-DNN, and TRCA-Net respectively in the high-frequency dataset. The achieved results were 4.7%, 4.6%, 23.6%, 52.5%, 31.7%, and 7.0% higher than those of eTRCA, eTRCA-R, DNN, EEGnet, Ensemble-DNN, and TRCA-Net, respectively, and were comparable to those of TDCA in Benchmark dataset. The accuracy of Dis-ComNet in the wearable dataset was 9.5%, 7.1%, 36.1%, 26.3%, 15.7% and 4.7% higher than eTRCA, eTRCA-R, DNN, EEGnet, Ensemble-DNN, and TRCA-Net respectively, and comparable to TDCA. Besides, our model achieved the ITRs up to 126.0 bits/min, 236.4 bits/min and 103.6 bits/min in the high-frequency, Benchmark and the wearable datasets respectively.This study develops an effective model for the detection of SSVEPs, facilitating the development of high accuracy SSVEP-BCI systems.
基于稳态视觉诱发电位的脑机接口(SSVEP-BCIs)因其简单性、高信噪比和高信息传输率(ITRs)而备受关注。目前,准确检测是提高SSVEP-BCI系统性能的关键问题。本研究提出了一种名为判别压缩网络(Dis-ComNet)的新型解码方法,该方法利用了空间滤波和深度学习(DL)的优势。具体而言,本研究使用全局模板对齐和判别空间模式增强了SSVEP特征,然后设计了一个压缩时空模块(CTSM)来提取更精细的特征。所提出的方法在一个自行收集的高频数据集、一个公共基准数据集和一个公共可穿戴数据集上进行了评估。结果表明,Dis-ComNet显著优于现有的空间滤波方法、DL方法和其他融合方法。值得注意的是,在高频数据集中,与eTRCA、eTRCA-R、TDCA、DNN、EEGnet、Ensemble-DNN和TRCA-Net相比,Dis-ComNet的分类准确率分别提高了3.9%、3.5%、3.2%、13.3%、17.4%、37.5%和2.5%。所取得的结果分别比eTRCA、eTRCA-R、DNN、EEGnet、Ensemble-DNN和TRCA-Net高4.7%、4.6%、23.6%、52.5%、31.7%和7.0%,并且在基准数据集中与TDCA相当。Dis-ComNet在可穿戴数据集中的准确率分别比eTRCA、eTRCA-R、DNN、EEGnet、Ensemble-DNN和TRCA-Net高9.5%、7.1%、36.1%、26.3%、15.7%和4.7%,并且与TDCA相当。此外,我们的模型在高频、基准和可穿戴数据集中分别实现了高达126.0比特/分钟、236.4比特/分钟和103.6比特/分钟的信息传输率。本研究开发了一种用于检测SSVEP的有效模型,促进了高精度SSVEP-BCI系统的发展。