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基于改进公共空间模式的脑机接口多层迁移学习算法

Multi-layer transfer learning algorithm based on improved common spatial pattern for brain-computer interfaces.

作者信息

Cai Zhuo, Gao Yunyuan, Fang Feng, Zhang Yingchun, Du Shunlan

机构信息

School of Automation, Hangzhou Dianzi University, Hangzhou, Zhejiang, 310018, China.

School of Automation, Hangzhou Dianzi University, Hangzhou, Zhejiang, 310018, China.

出版信息

J Neurosci Methods. 2025 Mar;415:110332. doi: 10.1016/j.jneumeth.2024.110332. Epub 2024 Nov 28.

Abstract

In the application of brain-computer interface, the differences in imaging methods and brain structure between subjects hinder the effectiveness of decoding algorithms when applied on different subjects. Transfer learning has been designed to solve this problem. There have been many applications of transfer learning in motor imagery (MI), however the effectiveness is still limited due to the inconsistent domain alignment, lack of prominent data features and allocation of weights in trails. In this paper, a Multi-layer transfer learning algorithm based on improved Common Spatial Patterns (MTICSP) was proposed to solve these problems. Firstly, the source domain data and target domain data were aligned by Target Alignment (TA)method to reduce distribution differences between subjects. Secondly, the mean covariance matrix of the two classes was re-weighted by calculating the distance between the covariance matrix of each trial in the source domain and the target domain. Thirdly, the improved Common Spatial Patterns (CSP) by introducing regularization coefficient was proposed to further reduce the difference between source domain and target domain to extract features. Finally, the feature blocks of the source domain and target domain were aligned again by Joint Distribution Adaptation (JDA) method. Experiments on two public datasets in two transfer paradigms multi-source to single-target (MTS) and single-source to single-target (STS) verified the effectiveness of our proposed method. The MTS and STS in the 5-person dataset were 80.21% and 77.58%, respectively, and 80.10% and 73.91%, respectively, in the 9-person dataset. Experimental results also showed that the proposed algorithm was superior to other state-of-the-art algorithms. In addition, the generalization ability of our algorithm MTICSP was validated on the fatigue EEG dataset collected by ourselves, and obtained 94.83% and 87.41% accuracy in MTS and STS experiments respectively. The proposed method combines improved CSP with transfer learning to extract the features of source and target domains effectively, providing a new method for combining transfer learning with motor imagination.

摘要

在脑机接口的应用中,受试者之间成像方法和脑结构的差异会影响解码算法应用于不同受试者时的有效性。迁移学习旨在解决这一问题。迁移学习在运动想象(MI)中已有许多应用,但由于域对齐不一致、缺乏突出的数据特征以及试验中权重分配等问题,其有效性仍然有限。本文提出了一种基于改进公共空间模式(MTICSP)的多层迁移学习算法来解决这些问题。首先,采用目标对齐(TA)方法对源域数据和目标域数据进行对齐,以减少受试者之间的分布差异。其次,通过计算源域和目标域中每个试验的协方差矩阵之间的距离,对两类的平均协方差矩阵进行重新加权。第三,提出了引入正则化系数的改进公共空间模式(CSP),以进一步减少源域和目标域之间的差异来提取特征。最后,通过联合分布自适应(JDA)方法对源域和目标域的特征块再次进行对齐。在多源到单目标(MTS)和单源到单目标(STS)两种迁移范式下的两个公共数据集上进行的实验验证了所提方法的有效性。5人数据集中的MTS和STS分别为80.21%和77.58%,9人数据集中分别为80.10%和73.91%。实验结果还表明,所提算法优于其他现有算法。此外,在我们自己收集的疲劳脑电数据集上验证了算法MTICSP的泛化能力,在MTS和STS实验中分别获得了94.83%和87.41%的准确率。所提方法将改进的CSP与迁移学习相结合,有效地提取了源域和目标域的特征,为迁移学习与运动想象相结合提供了一种新方法。

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