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Instance Transfer Subject-Dependent Strategy for Motor Imagery Signal Classification Using Deep Convolutional Neural Networks

机译:使用深卷积神经网络进行电动机图像分类的实例转移主题依赖策略

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In the process of brain-computer interface (BCI), variations across sessions/subjects result in differences in the properties of potential of the brain. This issue may lead to variations in feature distribution of electroencephalogram (EEG) across subjects, which greatly reduces the generalization ability of a classifier. Although subject-dependent (SD) strategy provides a promising way to solve the problem of personalized classification, it cannot achieve expected performance due to the limitation of the amount of data especially for a deep neural network (DNN) classification model. Herein, we propose an instance transfer subject-independent (ITSD) framework combined with a convolutional neural network (CNN) to improve the classification accuracy of the model during motor imagery (MI) task. The proposed framework consists of the following steps. Firstly, an instance transfer learning based on the perceptive Hash algorithm is proposed to measure similarity of spectrogram EEG signals between different subjects. Then, we develop a CNN to decode these signals after instance transfer learning. Next, the performance of classifications by different training strategies (subject-independent- (SI-) CNN, SD-CNN, and ITSD-CNN) are compared. To verify the effectiveness of the algorithm, we evaluate it on the dataset of BCI competition IV-2b. Experiments show that the instance transfer learning can achieve positive instance transfer using a CNN classification model. Among the three different training strategies, the average classification accuracy of ITSD-CNN can achieve 94.7±2.6 and obtain obvious improvement compared with a contrast model p0.01. Compared with other methods proposed in previous research, the framework of ITSD-CNN outperforms the state-of-the-art classification methods with a mean kappa value of 0.664.
机译:在脑 - 计算机接口(BCI)的过程中,跨会话/受试者的变化导致大脑潜力的性质的差异。该问题可能导致跨对象的脑电图(EEG)的特征分布的变化,这大大降低了分类器的泛化能力。虽然受试者依赖(SD)策略提供了解决个性化分类问题的有希望的方法,但由于对深度神经网络(DNN)分类模型的数据量的限制,它无法实现预期的性能。这里,我们提出了一个实例转移主题独立(ITSD)框架与卷积神经网络(CNN)联合,以改善电动机图像(MI)任务期间模型的分类精度。建议的框架包括以下步骤。首先,提出了一种基于感知散列算法的实例传输学习,以测量不同受试者之间的谱图EEG信号的相似性。然后,我们在实例传输学习之后开发CNN以解码这些信号。接下来,比较不同培训策略的分类的性能(独立独立于 - (Si-)CNN,SD-CNN和ITSD-CNN)。为了验证算法的有效性,我们在BCI竞赛IV-2B的数据集上评估它。实验表明,使用CNN分类模型可以实现实例转移学习。在三种不同的培训策略中,ITSD-CNN的平均分类准确性可以达到94.7±2.6,并与造影模型P <0.01相比获得明显的改进。与先前研究中提出的其他方法相比,ITSD-CNN的框架优于最先进的分类方法,其平均kappa值为0.664。

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