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Trends in Compressive Sensing for EEG Signal Processing Applications

机译:EEG信号处理应用的压缩感应趋势

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摘要

The tremendous progress of big data acquisition and processing in the field of neural engineering has enabled a better understanding of the patient’s brain disorders with their neural rehabilitation, restoration, detection, and diagnosis. An integration of compressive sensing (CS) and neural engineering emerges as a new research area, aiming to deal with a large volume of neurological data for fast speed, long-term, and energy-saving purposes. Furthermore, electroencephalography (EEG) signals for brain–computer interfaces (BCIs) have shown to be very promising, with diverse neuroscience applications. In this review, we focused on EEG-based approaches which have benefited from CS in achieving fast and energy-saving solutions. In particular, we examine the current practices, scientific opportunities, and challenges of CS in the growing field of BCIs. We emphasized on summarizing major CS reconstruction algorithms, the sparse basis, and the measurement matrix used in CS to process the EEG signal. This literature review suggests that the selection of a suitable reconstruction algorithm, sparse basis, and measurement matrix can help to improve the performance of current CS-based EEG studies. In this paper, we also aim at providing an overview of the reconstruction free CS approach and the related literature in the field. Finally, we discuss the opportunities and challenges that arise from pushing the integration of the CS framework for BCI applications.
机译:在神经工程领域的大数据采集和加工的巨大进展使得对患者的脑疾病更好地了解其神经康复,恢复,检测和诊断。压缩传感(CS)和神经工程的整合成为一种新的研究领域,旨在处理大量的神经系统数据以快速,长期和节能的目的。此外,脑电电脑接口(BCIS)的脑电图(EEG)信号表明是非常有前途的,具有不同的神经科学应用。在本次审查中,我们专注于基于EEG的方法,这些方法受益于CS实现快速和节能解决方案。特别是,我们研究了BCIS越​​来越多的CS的当前做法,科学机会和挑战。我们强调了CS中使用的主要CS重建算法,稀疏基础和测量矩阵来处理EEG信号。该文献综述表明,选择合适的重建算法,稀疏基础和测量矩阵可以有助于提高基于CS的脑电图研究的性能。在本文中,我们还可以旨在概述重建的自由CS方法和现场相关文献。最后,我们讨论了推动CS框架为BCI应用程序的集成而产生的机会和挑战。

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