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引用次数: 0
摘要
特征提取对于脑机接口中不同运动图像(MI)任务的分类至关重要。为了提高分类的准确性,我们提出了一种新颖的特征提取方法,即提取脑功能网络(BFN)的连接增量率(CIR)。首先,根据通道间 mu 节律的皮尔逊相关系数的阈值矩阵构建 BFN。此外,还构建了加权 BFN,并用现有边缘权重之和表示,以表征不同运动模式下大脑皮层的激活程度。然后,根据七种心理任务的拓扑结构,构建了以 C3、C4 和 Cz 通道为中心的三个区域网络,这与神经生理学中肢体运动模式与大脑皮层的对应关系是一致的。此外,我们还计算了每个区域功能网络的 CIR,形成三维向量。最后,我们使用支持向量机来学习多分类 MI 任务的分类器。实验结果表明,提取的特征 CIR 在处理 MI 分类方面取得了显著的改进和成功。具体来说,平均分类性能达到了 88.67%,高于其他竞争方法,这表明提取的 CIR 对 MI 分类是有效的。
Research on Recognition of Motor Imagination Based on Connectivity Features of Brain Functional Network.
Feature extraction is essential for classifying different motor imagery (MI) tasks in a brain-computer interface. To improve classification accuracy, we propose a novel feature extraction method in which the connectivity increment rate (CIR) of the brain function network (BFN) is extracted. First, the BFN is constructed on the basis of the threshold matrix of the Pearson correlation coefficient of the mu rhythm among the channels. In addition, a weighted BFN is constructed and expressed by the sum of the existing edge weights to characterize the cerebral cortex activation degree in different movement patterns. Then, on the basis of the topological structures of seven mental tasks, three regional networks centered on the C3, C4, and Cz channels are constructed, which are consistent with correspondence between limb movement patterns and cerebral cortex in neurophysiology. Furthermore, the CIR of each regional functional network is calculated to form three-dimensional vectors. Finally, we use the support vector machine to learn a classifier for multiclass MI tasks. Experimental results show a significant improvement and demonstrate the success of the extracted feature CIR in dealing with MI classification. Specifically, the average classification performance reaches 88.67% which is higher than other competing methods, indicating that the extracted CIR is effective for MI classification.
期刊介绍:
Neural Plasticity is an international, interdisciplinary journal dedicated to the publication of articles related to all aspects of neural plasticity, with special emphasis on its functional significance as reflected in behavior and in psychopathology. Neural Plasticity publishes research and review articles from the entire range of relevant disciplines, including basic neuroscience, behavioral neuroscience, cognitive neuroscience, biological psychology, and biological psychiatry.