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基于选择性滤波器组自适应黎曼特征的会话无关自适应心理意象脑-机接口

Session-independent subject-adaptive mental imagery BCI using selective filter-bank adaptive Riemannian features.

机构信息

Department of Electrical Engineering, IIT Kanpur, Kanpur, India.

Department of Electronics Engineering, IIT Roorkee, Roorkee, India.

出版信息

Med Biol Eng Comput. 2024 Nov;62(11):3293-3310. doi: 10.1007/s11517-024-03137-5. Epub 2024 Jun 3.

DOI:10.1007/s11517-024-03137-5
PMID:38825665
Abstract

The brain-computer interfaces (BCIs) facilitate the users to exploit information encoded in neural signals, specifically electroencephalogram (EEG), to control devices and for neural rehabilitation. Mental imagery (MI)-driven BCI predicts the user's pre-meditated mental objectives, which could be deployed as command signals. This paper presents a novel learning-based framework for classifying MI tasks using EEG-based BCI. In particular, our work focuses on the variation in inter-session data and the extraction of multi-spectral user-tailored features for robust performance. Thus, the goal is to create a calibration-free subject-adaptive learning framework for various mental imagery tasks not restricted to motor imagery alone. In this regard, critical spectral bands and the best temporal window are first selected from the EEG training trials of the subject based on the Riemannian user learning distance metric (Dscore) that checks for distinct and stable patterns. The filtered covariance matrices of the EEG trials in each spectral band are then transformed towards a reference covariance matrix using the Riemannian transfer learning, enabling the different sessions to be comparable. The evaluation of our proposed Selective Time-window and Multi-scale Filter-Bank with Adaptive Riemannian (STFB-AR) features on four public datasets, including disabled subjects, showed around 15% and 8% improvement in mean accuracy over baseline and fixed filter-bank models, respectively.

摘要

脑机接口(BCI)使用户能够利用神经信号(特别是脑电图(EEG))中编码的信息来控制设备和进行神经康复。基于想象的脑机接口(MI-BCI)可以预测用户预先构思的心理目标,这些目标可以作为命令信号。本文提出了一种新的基于学习的框架,用于使用基于 EEG 的 BCI 对 MI 任务进行分类。特别是,我们的工作重点是在不同会话数据之间的变化和提取多谱用户定制特征方面,以实现稳健的性能。因此,目标是为各种想象任务创建一个无需校准的自适应学习框架,不仅限于运动想象。在这方面,首先根据黎曼用户学习距离度量(Dscore)从主体的 EEG 训练试验中选择关键频谱带和最佳时间窗口,该度量检查是否存在独特且稳定的模式。然后,使用黎曼转移学习将每个频谱带中 EEG 试验的滤波协方差矩阵转换为参考协方差矩阵,从而可以比较不同的会话。我们在四个公共数据集(包括残疾受试者)上对选择性时间窗口和自适应黎曼多尺度滤波器组(STFB-AR)特征的评估表明,与基线和固定滤波器组模型相比,平均准确率分别提高了约 15%和 8%。

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本文引用的文献

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Capped L21-norm-based common spatial patterns for EEG signals classification applicable to BCI systems.适用于脑机接口系统的基于L21范数上限的脑电信号分类公共空间模式
Med Biol Eng Comput. 2023 May;61(5):1083-1092. doi: 10.1007/s11517-023-02782-6. Epub 2023 Jan 20.
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