Centre for Optical and Electromagnetic Research, State Key Laboratory of Modern Optical Instrumentations, Zhejiang University, Hangzhou, People's Republic of China.
Ningbo Research Institute, Zhejiang University, Ningbo 315100, People's Republic of China.
J Neural Eng. 2021 Apr 9;18(5). doi: 10.1088/1741-2552/abf187.
. Development of a brain-computer interface (BCI) requires classification of brain neural activities to different states. Functional near-infrared spectroscopy (fNIRS) can measure the brain activities and has great potential for BCI. In recent years, a large number of classification algorithms have been proposed, in which deep learning methods, especially convolutional neural network (CNN) methods are successful. fNIRS signal has typical time series properties, we combined fNIRS data and kinds of CNN-based time series classification (TSC) methods to classify BCI task.. In this study, participants were recruited for a left and right hand motor imagery experiment and the cerebral neural activities were recorded by fNIRS equipment (FOIRE-3000). TSC methods are used to distinguish the brain activities when imagining the left or right hand. We have tested the overall person, single person and overall person with single-channel classification results, and these methods achieved excellent classification results. We also compared the CNN-based TSC methods with traditional classification methods such as support vector machine.. Experiments showed that the CNN-based methods have significant advantages in classification accuracy: the CNN-based methods have achieved remarkable results in the classification of left-handed and right-handed imagination tasks, reaching 98.6% accuracy on overall person, 100% accuracy on single person, and in the single-channel classification an accuracy of 80.1% has been achieved with the best-performing channel.. These results suggest that using the CNN-based TSC methods can significantly improve the BCI performance and also lay the foundation for the miniaturization and portability of training rehabilitation equipment.
. 脑机接口(BCI)的开发需要将大脑神经活动分类为不同的状态。功能近红外光谱(fNIRS)可以测量大脑活动,在 BCI 中具有很大的潜力。近年来,提出了大量的分类算法,其中深度学习方法,特别是卷积神经网络(CNN)方法是成功的。fNIRS 信号具有典型的时间序列特性,我们将 fNIRS 数据与各种基于 CNN 的时间序列分类(TSC)方法相结合,以分类 BCI 任务。在这项研究中,我们招募了参与者进行左手和右手运动想象实验,并使用 fNIRS 设备(FOIRE-3000)记录大脑神经活动。TSC 方法用于区分想象左手或右手时的大脑活动。我们已经测试了整体人、单人以及整体人与单通道分类结果,这些方法取得了优异的分类结果。我们还将基于 CNN 的 TSC 方法与传统分类方法(如支持向量机)进行了比较。实验表明,基于 CNN 的方法在分类准确性方面具有显著优势:基于 CNN 的方法在手和右手想象任务的分类中取得了显著的成果,整体人的分类准确率达到 98.6%,单人的分类准确率达到 100%,在单通道分类中,表现最好的通道的准确率达到了 80.1%。这些结果表明,使用基于 CNN 的 TSC 方法可以显著提高 BCI 的性能,并为培训康复设备的小型化和便携化奠定基础。