Deep learning has achieved excellent performance in a wide range of domains, especially in speech recognition and computer vision. Relatively less work has been done for EEG, but there is still significant progress attained in the last decade. Due to the lack of a comprehensive and topic widely covered survey for deep learning in EEG, we attempt to summarize recent progress to provide an overview, as well as perspectives for future developments. We first briefly mention the artifacts removal for EEG signal and then introduce deep learning models that have been utilized in EEG processing and classification. Subsequently, the applications of deep learning in EEG are reviewed by categorizing them into groups such as brain-computer interface, disease detection, and emotion recognition. They are followed by the discussion, in which the pros and cons of deep learning are presented and future directions and challenges for deep learning in EEG are proposed. We hope that this paper could serve as a summary of past work for deep learning in EEG and the beginning of further developments and achievements of EEG studies based on deep learning.
翻译:在广泛的领域,特别是在语音识别和计算机愿景方面,深层学习取得了优异的成绩。在经济学领域开展的工作相对较少,但在过去十年中仍取得了显著进展。由于缺乏一个全面和广泛覆盖的关于经济学领域深层学习的专题调查,我们试图总结最近的进展,以提供一个概览以及未来发展的前景。我们首先简要地提及为经济学领域小组信号清除文物的工作,然后引入在经济学领域处理和分类中使用的深层学习模式。随后,通过将其分为诸如脑计算机界面、疾病检测和情感识别等群体来审查经济学领域深层学习的应用。随后进行讨论,提出深层学习的利弊,并提出今后在经济学领域深层学习的方向和挑战。我们希望,本文件可以作为过去在经济学领域深层学习的总结,并开始在深层学习的基础上开展经济学研究的进一步发展和成就。