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Performance Comparison of Different EEG Analysis Techniques Based on Deep Learning Approaches

机译:基于深度学习方法的不同EEG分析技术的性能比较

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Deep learning models using neural networks are capable of finding hidden patterns and their associations without assistance of domain experts. Brain-computer interface (BCI) is one of the popular research areas and has seen a variety of research approaches in recent years. Combining BCI research with deep learning has opened doors to many interdisciplinary applications in the aviation industry, passenger safety and many more. Electroencephalogram (EEG) analysis is a crucial part in the research of BCI. This paper aims to present a survey of published works on EEG analysis techniques in the past few years. The paper gives the different deep learning techniques used in the analysis of EEG signals. In this paper, we propose a brief study and comparison of existing methodologies for EEG signal analysis using deep learning models.
机译:使用神经网络的深度学习模型能够在没有领域专家的帮助下找到隐藏的模式及其关联。 Brain-Computer界面(BCI)是流行的研究领域之一,近年来已经看过各种研究方法。将BCI研究与深度学习相结合,在航空业,乘客安全等许多跨学科应用中开辟了门。脑电图(EEG)分析是BCI研究的关键部分。本文旨在在过去几年中展示对EEG分析技术的公布工作。本文给出了在EEG信号分析中使用的不同深层学习技术。本文提出了使用深层学习模型的简要研究和比较EEG信号分析的现有方法。

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