Chengqiang Xie, Li Wang, Jiafeng Yang, Jiaying Guo
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引用次数: 0
摘要
脑机接口(brain -computer interface, BCI)促进了人脑与计算机之间的连接,使个体能够通过认知过程间接控制外部设备。虽然具有很大的发展前景,但个体间脑电信号的显著差异阻碍了用户对脑机接口系统的进一步利用。解决这一差异和提高脑机接口分类精度仍然是关键的挑战。本文提出了一种基于深度学习的将数据分布从源域转移到目标域的迁移学习模型,称为Generator与Euclidean alignment相结合的主题迁移神经网络(ST-GENN)。它包括三个部分:1)将原始脑电信号在欧几里得空间内对齐;2)将对齐后的数据发送给Generator,获取传输特征;3)利用卷积-注意-时间(CAT)分类器对转移的特征进行分类。结果在BCI competition IV 2a、BCI competition IV 2b和SHU数据集上验证了该模型的分类性能,3个数据集的分类结果分别为82.85 %、86.28 %和67.2% %。与现有方法的比较结果表明,该方法对受试者的可变性具有鲁棒性,在2a数据集上,该方法的平均精度优于基线算法,范围从2.03 %到15.43 %,在2b数据集上从0.86 %到10.16 %,在SHU数据集上从3.3 %到17.9 %。我们的模型的优势在于它能够有效地将源领域数据的经验和知识转移到目标领域,从而弥合它们之间的差距。该方法可提高MI-BCI系统的实用性。
A subject transfer neural network fuses Generator and Euclidean alignment for EEG-based motor imagery classification
Background
Brain-computer interface (BCI) facilitates the connection between human brain and computer, enabling individuals to control external devices indirectly through cognitive processes. Although it has great development prospects, the significant difference in EEG signals among individuals hinders users from further utilizing the BCI system.
New method
Addressing this difference and improving BCI classification accuracy remain key challenges. In this paper, we propose a transfer learning model based on deep learning to transfer the data distribution from the source domain to the target domain, named a subject transfer neural network combining the Generator with Euclidean alignment (ST-GENN). It consists of three parts: 1) Align the original EEG signals in the Euclidean space; 2) Send the aligned data to the Generator to obtain the transferred features; 3) Utilize the Convolution-attention-temporal (CAT) classifier to classify the transferred features.
Results
The model is validated on BCI competition IV 2a, BCI competition IV 2b and SHU datasets to evaluate its classification performance, and the results are 82.85 %, 86.28 % and 67.2 % for the three datasets, respectively.
Comparison with existing methods
The results have been shown to be robust to subject variability, with the average accuracy of the proposed method outperforming baseline algorithms by ranging from 2.03 % to 15.43 % on the 2a dataset, from 0.86 % to 10.16 % on the 2b dataset and from 3.3 % to 17.9 % on the SHU dataset.
Conclusions for research articles
The advantage of our model lies in its ability to effectively transfer the experience and knowledge of the source domain data to the target domain, thus bridging the gap between them. Our method can improve the practicability of MI-BCI systems.
期刊介绍:
The Journal of Neuroscience Methods publishes papers that describe new methods that are specifically for neuroscience research conducted in invertebrates, vertebrates or in man. Major methodological improvements or important refinements of established neuroscience methods are also considered for publication. The Journal''s Scope includes all aspects of contemporary neuroscience research, including anatomical, behavioural, biochemical, cellular, computational, molecular, invasive and non-invasive imaging, optogenetic, and physiological research investigations.