Ke Liu;Mingzhao Yang;Zhuliang Yu;Guoyin Wang;Wei Wu
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引用次数: 13
摘要
目的:运动意象(MI)是一种心理过程,作为脑机接口(bci)的实验范式在广泛的基础科学和临床研究中得到广泛应用。然而,由于大脑模式相对于机器学习可用的小样本量的固有复杂性,从人工智能中解码意图仍然具有挑战性。方法:提出了一种端到端滤波器组多尺度卷积神经网络(FBMSNet)用于MI分类。首先使用滤波器组来推导EEG数据的多视图频谱表示。然后应用混合深度卷积提取多尺度的时间特征,然后进行空间滤波以减轻体积传导。最后,在交叉熵和中心损失的联合监督下,FBMSNet获得了最大的类间分散和类内紧密度的特征。我们将FBMSNet与几种最先进的EEG解码方法在两个MI数据集(BCI Competition IV 2a数据集和OpenBMI数据集)上进行了比较。FBMSNet在四类和两类hold out分类准确率分别达到79.17%和70.05%,显著优于基准方法。意义:这些结果证明了FBMSNet在提高脑电解码性能以实现更强大的脑机接口应用方面的有效性。FBMSNet源代码可从https://github.com/Want2Vanish/FBMSNet获得。
FBMSNet: A Filter-Bank Multi-Scale Convolutional Neural Network for EEG-Based Motor Imagery Decoding
Object:
Motor imagery (MI) is a mental process widely utilized as the experimental paradigm for brain-computer interfaces (BCIs) across a broad range of basic science and clinical studies. However, decoding intentions from MI remains challenging due to the inherent complexity of brain patterns relative to the small sample size available for machine learning.
Approach:
This paper proposes an end-to-end Filter-Bank Multiscale Convolutional Neural Network (FBMSNet) for MI classification. A filter bank is first employed to derive a multiview spectral representation of the EEG data. Mixed depthwise convolution is then applied to extract temporal features at multiple scales, followed by spatial filtering to mitigate volume conduction. Finally, with the joint supervision of cross-entropy and center loss, FBMSNet obtains features that maximize interclass dispersion and intraclass compactness.
Main results:
We compare FBMSNet with several state-of-the-art EEG decoding methods on two MI datasets: the BCI Competition IV 2a dataset and the OpenBMI dataset. FBMSNet significantly outperforms the benchmark methods by achieving 79.17% and 70.05% for four-class and two-class hold-out classification accuracy, respectively.
Significance:
These results demonstrate the efficacy of FBMSNet in improving EEG decoding performance toward more robust BCI applications. The FBMSNet source code is available at
https://github.com/Want2Vanish/FBMSNet
.
期刊介绍:
IEEE Transactions on Biomedical Engineering contains basic and applied papers dealing with biomedical engineering. Papers range from engineering development in methods and techniques with biomedical applications to experimental and clinical investigations with engineering contributions.