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Deep Transfer Learning for Cross-subject and Cross-experiment Prediction of Image Rapid Serial Visual Presentation Events from EEG Data

机译:深度转移学习可从EEG数据进行图像快速串行视觉呈现事件的跨主题和跨实验预测

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Transfer learning (TL) has gained significant interests recently in brain computer interface (BCI) as a key approach to design robust predictors for cross-subject and cross-experiment prediction of the brain activities in response to cognitive events. We carried out in this.aper the first comprehensive investigation of the transferability of deep convolutional neural network (CNN) for cross-subject and cross-experiment prediction of image Rapid Serial Visual Presentation (RSVP) events. We show that for both cross-subject and cross-experiment predictions, all convolutional layers and fully connected layers contain both general and subject/experiment-specific features and transfer learning with weights fine-tuning can improve the prediction performance over that without transfer. However, for cross-subject prediction, the convolutional layers capture more subject-specific features, whereas for cross-experiment prediction, the convolutional layers capture more general features across experiment. Our study provides important information that will guide the design of more sophisticated deep transfer learning algorithms for EEG based classifications in BCI applications.
机译:转移学习(TL)最近在脑计算机接口(BCI)中获得了广泛的关注,作为设计鲁棒的预测器的关键方法,该预测器用于响应认知事件的大脑活动的跨主题和跨实验预测。在本文中,我们对深度卷积神经网络(CNN)的可传递性进行了首次全面研究,以用于图像快速串行视觉呈现(RSVP)事件的跨主题和跨实验预测。我们表明,对于跨学科和跨实验的预测,所有卷积层和完全连接的层都包含常规和特定于学科/实验的特征,通过权重微调进行的转移学习可以提高预测性能,而无需转移。但是,对于跨学科预测,卷积层捕获更多特定于对象的特征,而对于跨实验预测,卷积层捕获整个实验中的更多常规特征。我们的研究提供了重要的信息,这些信息将指导BCI应用中基于EEG的分类的更复杂的深度迁移学习算法的设计。

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