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STaRNet:一种用于高性能运动想象解码的时空与黎曼网络。

STaRNet: A spatio-temporal and Riemannian network for high-performance motor imagery decoding.

作者信息

Wang Xingfu, Yang Wenjie, Qi Wenxia, Wang Yu, Ma Xiaojun, Wang Wei

机构信息

CAS Key Laboratory of Space Manufacturing Technology, Technology and Engineering Center for Space Utilization, Chinese Academy of Sciences, Beijing, China; University of Chinese Academy of Sciences, Beijing, China.

National Engineering and Technology Research Center for ASIC Design, Institute of Automation, Chinese Academy of Sciences, Beijing, China; University of Chinese Academy of Sciences, Beijing, China.

出版信息

Neural Netw. 2024 Oct;178:106471. doi: 10.1016/j.neunet.2024.106471. Epub 2024 Jun 26.

Abstract

Brain-computer interfaces (BCIs), representing a transformative form of human-computer interaction, empower users to interact directly with external environments through brain signals. In response to the demands for high accuracy, robustness, and end-to-end capabilities within BCIs based on motor imagery (MI), this paper introduces STaRNet, a novel model that integrates multi-scale spatio-temporal convolutional neural networks (CNNs) with Riemannian geometry. Initially, STaRNet integrates a multi-scale spatio-temporal feature extraction module that captures both global and local features, facilitating the construction of Riemannian manifolds from these comprehensive spatio-temporal features. Subsequently, a matrix logarithm operation transforms the manifold-based features into the tangent space, followed by a dense layer for classification. Without preprocessing, STaRNet surpasses state-of-the-art (SOTA) models by achieving an average decoding accuracy of 83.29% and a kappa value of 0.777 on the BCI Competition IV 2a dataset, and 95.45% accuracy with a kappa value of 0.939 on the High Gamma Dataset. Additionally, a comparative analysis between STaRNet and several SOTA models, focusing on the most challenging subjects from both datasets, highlights exceptional robustness of STaRNet. Finally, the visualizations of learned frequency bands demonstrate that temporal convolutions have learned MI-related frequency bands, and the t-SNE analyses of features across multiple layers of STaRNet exhibit strong feature extraction capabilities. We believe that the accurate, robust, and end-to-end capabilities of the STaRNet will facilitate the advancement of BCIs.

摘要

脑机接口(BCIs)代表了一种变革性的人机交互形式,它使用户能够通过脑信号直接与外部环境进行交互。为了响应基于运动想象(MI)的脑机接口对高精度、鲁棒性和端到端能力的需求,本文介绍了STaRNet,这是一种将多尺度时空卷积神经网络(CNNs)与黎曼几何相结合的新型模型。首先,STaRNet集成了一个多尺度时空特征提取模块,该模块可捕获全局和局部特征,便于从这些全面的时空特征构建黎曼流形。随后,通过矩阵对数运算将基于流形的特征转换到切空间,接着使用全连接层进行分类。在无需预处理的情况下,STaRNet在脑机接口竞赛IV 2a数据集上实现了83.29%的平均解码准确率和0.777的kappa值,超越了现有最先进(SOTA)模型;在高伽马数据集上,其准确率达到95.45%,kappa值为0.939。此外,对STaRNet与几个SOTA模型进行的对比分析(聚焦于两个数据集里最具挑战性的受试者)突出了STaRNet卓越的鲁棒性。最后,对学习到的频段进行可视化显示,时间卷积学习到了与运动想象相关的频段,并且对STaRNet多层特征进行的t-SNE分析展现出强大的特征提取能力。我们相信,STaRNet准确、鲁棒和端到端的能力将推动脑机接口的发展。

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