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Few-Shot Relation Learning with Attention for EEG-based Motor Imagery Classification

机译:对eEG的电动机图像分类的注意力很少

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Brain-Computer Interfaces (BCI) based on Electroencephalography (EEG) signals, in particular motor imagery (MI) data have received a lot of attention and show the potential towards the design of key technologies both in healthcare and other industries. MI data is generated when a subject imagines movement of limbs and can be used to aid rehabilitation as well as in autonomous driving scenarios. Thus, classification of MI signals is vital for EEG-based BCI systems. Recently, MI EEG classification techniques using deep learning have shown improved performance over conventional techniques. However, due to inter-subject variability, the scarcity of unseen subject data, and low signal-to-noise ratio, extracting robust features and improving accuracy is still challenging. In this context, we propose a novel two-way few shot network that is able to efficiently learn how to learn representative features of unseen subject categories and how to classify them with limited MI EEG data. The pipeline includes an embedding module that learns feature representations from a set of samples, an attention mechanism for key signal feature discovery, and a relation module for final classification based on relation scores between a support set and a query signal. In addition to the unified learning of feature similarity and a few shot classifier, our method leads to emphasize informative features in support data relevant to the query data, which generalizes better on unseen subjects. For evaluation, we used the BCI competition IV 2b dataset and achieved an 9.3% accuracy improvement in the 20-shot classification task with state-of-the-art performance. Experimental results demonstrate the effectiveness of employing attention and the overall generality of our method.
机译:脑 - 机基于脑电图接口(BCI)(EEG)信号,特别是运动想象(MI)数据已经收到了很多的关注,并显示出对双方在医疗卫生等行业关键技术的设计潜力。当肢体的受试者不可想象运动和可用于辅助康复以及在自主驾驶场景生成MI的数据。因此,MI信号的分类是基于EEG的BCI系统是至关重要的。近日,采用深度学习MI EEG分类技术已经证明了传统技术提高了性能。然而,由于到对象间的变异,看不见的对象数据的稀缺性,和低信噪比,提取强大的功能和提高精度仍然具有挑战性。在此背景下,我们提出了一个新颖的双向几拍网络能够有效地学会如何学习看不见的主题类别,以及如何将其与限制MI EEG数据进行分类的代表性特征。该管道包括一个嵌入模块获悉特征表示从一组样品中,注意的机制,关键信号特征的发现,并基于支持集和查询信号之间关系的得分最终分类的关系模块。除了功能相似性和一些拍摄分类的统一学习,我们的方法导致以强调相关的查询数据的支持数据,从而推广更好的看不见的科目信息量大的特点。对于评估中,我们使用了BCI竞争IV 2B的数据集,并实现了与国家的最先进的性能的20次分类任务的9.3%精度的提高。实验结果表明,采用的重视和我们的方法整体一般性的有效性。

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