论文标题
一种新型的混合脑计算机界面的多模式方法
A novel multimodal approach for hybrid brain-computer interface
论文作者
论文摘要
大脑计算机界面(BCI)技术已在许多领域广泛使用。特别是,诸如脑电图(EEG)或近红外光谱(NIR)等非侵入性技术已用于检测运动图像,疾病或精神状态。文献中已经显示出,脑电图和NIR的混合动力比各自的个体信号具有更好的结果。 EEG和NIRS来源的融合算法是在现实生活应用中实施它们的关键。在这项研究中,我们提出了三种用于基于EEG和NIRS的脑部计算机界面系统的融合方法:线性融合,张量融合和$ p $ th阶多项式融合。首先,我们的结果证明了混合BCI系统更准确,如预期的那样。其次,$ p $ th阶多项式融合在三种方法中具有最佳的分类结果,并且与以前的研究相比,也显示出改进。对于运动图像任务和精神算术任务,以前论文的最佳检测准确性为74.20 \%和88.1 \%,而我们的准确性为77.53 \%\%和90.19 \%。此外,与复杂的人工神经网络方法不同,我们提出的方法在计算方面并不需要。
Brain-computer interface (BCI) technologies have been widely used in many areas. In particular, non-invasive technologies such as electroencephalography (EEG) or near-infrared spectroscopy (NIRS) have been used to detect motor imagery, disease, or mental state. It has been already shown in literature that the hybrid of EEG and NIRS has better results than their respective individual signals. The fusion algorithm for EEG and NIRS sources is the key to implement them in real-life applications. In this research, we propose three fusion methods for the hybrid of the EEG and NIRS-based brain-computer interface system: linear fusion, tensor fusion, and $p$th-order polynomial fusion. Firstly, our results prove that the hybrid BCI system is more accurate, as expected. Secondly, the $p$th-order polynomial fusion has the best classification results out of the three methods, and also shows improvements compared with previous studies. For a motion imagery task and a mental arithmetic task, the best detection accuracy in previous papers were 74.20\% and 88.1\%, whereas our accuracy achieved was 77.53\% and 90.19\% . Furthermore, unlike complex artificial neural network methods, our proposed methods are not as computationally demanding.