Zhang Baiwen, Xu Meng, Zhang Yueqi, Ye Sicheng, Chen Yuanfang
Institute of Information and Artificial Intelligence Technology, Beijing Academy of Science and Technology, Beijing 100089, China.
Faculty of Information Technology, Beijing University of Technology, Beijing 100124, China.
Bioengineering (Basel). 2024 Apr 2;11(4):347. doi: 10.3390/bioengineering11040347.
The rapid serial visual presentation-based brain-computer interface (RSVP-BCI) system achieves the recognition of target images by extracting event-related potential (ERP) features from electroencephalogram (EEG) signals and then building target classification models. Currently, how to reduce the training and calibration time for classification models across different subjects is a crucial issue in the practical application of RSVP. To address this issue, a zero-calibration (ZC) method termed Attention-ProNet, which involves meta-learning with a prototype network integrating multiple attention mechanisms, was proposed in this study. In particular, multiscale attention mechanisms were used for efficient EEG feature extraction. Furthermore, a hybrid attention mechanism was introduced to enhance model generalization, and attempts were made to incorporate suitable data augmentation and channel selection methods to develop an innovative and high-performance ZC RSVP-BCI decoding model algorithm. The experimental results demonstrated that our method achieved a balance accuracy (BA) of 86.33% in the decoding task for new subjects. Moreover, appropriate channel selection and data augmentation methods further enhanced the performance of the network by affording an additional 2.3% increase in BA. The model generated by the meta-learning prototype network Attention-ProNet, which incorporates multiple attention mechanisms, allows for the efficient and accurate decoding of new subjects without the need for recalibration or retraining.
基于快速序列视觉呈现的脑机接口(RSVP-BCI)系统通过从脑电图(EEG)信号中提取事件相关电位(ERP)特征,然后构建目标分类模型来实现对目标图像的识别。目前,如何减少不同受试者分类模型的训练和校准时间是RSVP实际应用中的一个关键问题。为了解决这个问题,本研究提出了一种零校准(ZC)方法,称为Attention-ProNet,它涉及使用集成了多种注意力机制的原型网络进行元学习。具体而言,采用多尺度注意力机制进行高效的脑电特征提取。此外,引入了混合注意力机制以增强模型泛化能力,并尝试结合合适的数据增强和通道选择方法来开发一种创新的高性能ZC RSVP-BCI解码模型算法。实验结果表明,我们的方法在新受试者的解码任务中实现了86.33%的平衡准确率(BA)。此外,合适的通道选择和数据增强方法通过使BA额外提高2.3%,进一步提升了网络性能。由集成了多种注意力机制的元学习原型网络Attention-ProNet生成的模型,无需重新校准或重新训练,即可对新受试者进行高效准确的解码。