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Hybrid Deep Learning (hDL)-Based Brain-Computer Interface (BCI) Systems: A Systematic Review

机译:混合深度学习(HDL)基础的脑电脑界面(BCI)系统:系统审查

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摘要

Background: Brain-Computer Interface (BCI) is becoming more reliable, thanks to the advantages of Artificial Intelligence (AI). Recently, hybrid Deep Learning (hDL), which combines different DL algorithms, has gained momentum over the past five years. In this work, we proposed a review on hDL-based BCI starting from the seminal studies in 2015. Objectives: We have reviewed 47 papers that apply hDL to the BCI system published between 2015 and 2020 extracting trends and highlighting relevant aspects to the topic. Methods: We have queried four scientific search engines (Google Scholar, PubMed, IEEE Xplore and Elsevier Science Direct) and different data items were extracted from each paper such as the database used, kind of application, online/offline training, tasks used for the BCI, pre-processing methodology adopted, type of normalization used, which kind of features were extracted, type of DL architecture used, number of layers implemented and which optimization approach were used as well. All these items were then investigated one by one to uncover trends. Results: Our investigation reveals that Electroencephalography (EEG) has been the most used technique. Interestingly, despite the lower Signal-to-Noise Ratio (SNR) of the EEG data that makes pre-processing of that data mandatory, we have found that the pre-processing has only been used in 21.28% of the cases by showing that hDL seems to be able to overcome this intrinsic drawback of the EEG data. Temporal-features seem to be the most effective with 93.94% accuracy, while spatial-temporal features are the most used with 33.33% of the cases investigated. The most used architecture has been Convolutional Neural Network-Recurrent Neural Network CNN-RNN with 47% of the cases. Moreover, half of the studies have used a low number of layers to achieve a good compromise between the complexity of the network and computational efficiency. Significance: To give useful information to the scientific community, we make our summary table of hDL-based BCI papers available and invite the community to published work to contribute to it directly. We have indicated a list of open challenges, emphasizing the need to use neuroimaging techniques other than EEG, such as functional Near-Infrared Spectroscopy (fNIRS), deeper investigate the advantages and disadvantages of using pre-processing and the relationship with the accuracy obtained. To implement new combinations of architectures, such as RNN-based and Deep Belief Network DBN-based, it is necessary to better explore the frequency and temporal-frequency features of the data at hand.
机译:背景:由于人工智能(AI)的优点,脑电脑界面(BCI)变得越来越可靠。最近,结合不同DL算法的混合深度学习(HDL)在过去五年中获得了势头。在这项工作中,我们提出了根据2015年的开创性研究的基于HDL的BCI审查。目的:我们已审查了47篇论文,将HDL应用于2015年至2020年间发布的BCI系统,并突出了主题的相关方面。方法:我们已经查询了四种科学搜索引擎(Google Scholar,PubMed,IEEE Xplore和Elsevier Science直接),并从每份纸张中提取不同的数据项,例如使用的数据库,应用程序,在线/离线培训,用于使用的任务BCI,采用预处理方法,所使用的归一化类型,提取了哪种特征,所使用的DL架构类型,所实现的层数以及哪种优化方法也是如此。然后将所有这些物品一个接一个地调查以发现趋势。结果:我们的调查揭示了脑电图(EEG)是最常用的技术。有趣的是,尽管eEG数据的信噪比(SNR)较低,但是使得预先处理该数据强制性,我们发现预处理仅在21.28%的情况下显示了HDL似乎能够克服EEG数据的这种内在缺点。时间 - 特征似乎是最有效的,精度为93.94%,而空间时间特征是最多的,最多用于调查的案件的33.33%。最常用的架构一直是卷积神经网络 - 经常性神经网络CNN-RNN,其中47%的病例。此外,一半的研究使用了少量的层,以在网络的复杂性和计算效率之间实现良好的折衷。意义:为了向科学界提供有用的信息,我们使我们的HDL的BCI文件汇总表可用,并邀请社区发布工作以直接贡献。我们指出了一个开放挑战列表,强调需要使用eEG以外的神经影像学技术,例如功能近红外光谱(Fnirs),更深地研究使用预处理的优点和缺点和与所获得的精度的关系。为了实现基于RNN和基于深度信仰网络DBN的架构的新组合,有必要更好地探索手头数据的频率和时间频率特征。

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