In non-invasive brain-computer interface systems, pre-movement decoding plays an important role in the detection of movement before limbs actually move. Movement-related cortical potential is a kind of brain activity associated with pre-movement decoding. In current studies, patterns decoded from movement are mainly applied to the binary classification between movement state and resting state, such as elbow flexion and rest. The classifications between two movement states and among multiple movement states are still challenging. This study proposes a new method, the star-arrangement spectral filtering (SASF), to solve the multi-class pre-movement classification problem. We first design a referenced task-related component analysis (RTRCA) framework that consists of two modules. This first module is the classification between movement state and resting state; the second module is the classification of multiple movement states. SASF is developed by optimizing the features in RTRCA. In SASF, feature selection on filter banks is used on the first module of RTRCA, and feature selection on time windows is used on the second module of RTRCA. A linear discriminant analysis classifier is used to classify the optimized features. In the binary classification between two motions, the classification accuracy of SASF achieves 0.9670$\pm$0.0522, which is significantly higher than the result provided by the deep convolutional neural network (0.6247$\pm$0.0680) and the discriminative spatial pattern method (0.4400$\pm$0.0700). In the multi-class classification of 7 states, the classification accuracy of SASF is 0.9491$\pm$0.0372. The proposed SASF greatly improves the classification between two motions and enables the classification among multiple motions. The result shows that the movement can be decoded from EEG signals before the actual limb movement.
翻译:在非侵入性的大脑-计算机界面系统中,移动前解码在检测四肢实际移动前的移动情况方面起着重要作用。 运动相关皮层潜力是一种与移动前解码有关的大脑活动。 在目前的研究中, 从移动中解码的模式主要应用于运动状态和休息状态之间的二进制分类, 如手肘伸缩和休息。 两个运动状态和多个运动状态之间的分类仍然具有挑战性。 本研究提出了一种新的方法, 星序光谱过滤( SASF), 以解决多级价格前的移动问题。 运动相关皮层潜力是一种与移动前解码相关的大脑活动。 在RTRCA的第二个模块中, 星序分类值分类值为$60美元之前的星序分类( SASF) 。 一个参考任务相关部分分析(RTRCA) 包括两个模块, 移动状态与休息状态; 第二个模块是动作状态分类。 SASSFF, 筛选库的特性选择在RTRCA的第一个模块中, 在时间窗口中使用一个功能选择, 在RTRCA值前, 内值值为 内值 内值为 060, 的内流流流流流流流流流流流数据, 在两个磁值分析中, 在SLISF2中, 的输出分析中, 流流为SF2 流为SF2, 流为SF2, 。