A Deep Learning Method for Classification in Brain-Computer Interface

Sanoj Chakkithara Subramanian, Daniel D
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Abstract

Neural activity is the controlling signal used in enabling BCI to have direct communication with a computer. An array of EEG signals aid in the selection of the neural signal. The feature extractors and classifiers have a specific pattern of EEG control for a given BCI protocol, which is tailor-made and limited to that specific signal. Although a single protocol is applied in the deep neural networks used in EEG-based brain-computer interfaces, which are being used in the feature extraction and classification of speech recognition and computer vision, it is unclear how these architectures find themselves generalized in other area and prototypes. The deep learning approach used in transferring knowledge acquired from the source tasks to the target tasks is called transfer learning. Conventional machine learning algorithms have been surpassed by deep neural networks while solving problems concerning the real world. However, the best deep neural networks were identified by considering the knowledge of the problem domain. A significant amount of time and computational resources have to be spent to validate this approach. This work presents a deep learning neural network architecture based on Visual Geometry Group Network (VGGNet), Residual Network (ResNet), and inception network methods. Experimental results show that the proposed method achieves better performance than other methods.
一种脑机接口分类的深度学习方法
神经活动是用来使脑机接口与计算机直接通信的控制信号。一组脑电图信号有助于神经信号的选择。对于给定的BCI协议,特征提取器和分类器具有特定的EEG控制模式,该模式是量身定制的,仅限于特定的信号。尽管在基于脑电图的脑机接口中使用的深度神经网络中应用了单一协议,这些神经网络被用于语音识别和计算机视觉的特征提取和分类,但尚不清楚这些架构如何在其他领域和原型中得到推广。将从源任务获得的知识迁移到目标任务的深度学习方法称为迁移学习。在解决与现实世界有关的问题时,深度神经网络已经超越了传统的机器学习算法。然而,最好的深度神经网络是通过考虑问题域的知识来识别的。必须花费大量的时间和计算资源来验证这种方法。本文提出了一种基于视觉几何群网络(VGGNet)、残差网络(ResNet)和初始网络方法的深度学习神经网络架构。实验结果表明,该方法比其他方法具有更好的性能。
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