Faculty of Informatics, University of Debrecen, 4032 Debrecen, Hungary.
North University Center of Baia Mare, Technical University of Cluj-Napoca, 400114 Cluj-Napoca, Romania.
Sensors (Basel). 2024 Sep 7;24(17):5813. doi: 10.3390/s24175813.
This paper comprehensively reviews hardware acceleration techniques and the deployment of convolutional neural networks (CNNs) for analyzing electroencephalogram (EEG) signals across various application areas, including emotion classification, motor imagery, epilepsy detection, and sleep monitoring. Previous reviews on EEG have mainly focused on software solutions. However, these reviews often overlook key challenges associated with hardware implementation, such as scenarios that require a small size, low power, high security, and high accuracy. This paper discusses the challenges and opportunities of hardware acceleration for wearable EEG devices by focusing on these aspects. Specifically, this review classifies EEG signal features into five groups and discusses hardware implementation solutions for each category in detail, providing insights into the most suitable hardware acceleration strategies for various application scenarios. In addition, it explores the complexity of efficient CNN architectures for EEG signals, including techniques such as pruning, quantization, tensor decomposition, knowledge distillation, and neural architecture search. To the best of our knowledge, this is the first systematic review that combines CNN hardware solutions with EEG signal processing. By providing a comprehensive analysis of current challenges and a roadmap for future research, this paper provides a new perspective on the ongoing development of hardware-accelerated EEG systems.
这篇论文全面回顾了硬件加速技术以及卷积神经网络(CNN)在分析脑电图(EEG)信号方面的应用,涵盖了情绪分类、运动想象、癫痫检测和睡眠监测等多个应用领域。以前关于 EEG 的综述主要集中在软件解决方案上。然而,这些综述往往忽略了与硬件实现相关的关键挑战,例如需要小尺寸、低功耗、高安全性和高精度的场景。本文通过关注这些方面,讨论了可穿戴 EEG 设备的硬件加速所面临的挑战和机遇。具体来说,本文将 EEG 信号特征分为五类,并详细讨论了每种类别下的硬件实现解决方案,为各种应用场景提供了最适合的硬件加速策略的见解。此外,本文还探讨了 EEG 信号的高效 CNN 架构的复杂性,包括修剪、量化、张量分解、知识蒸馏和神经架构搜索等技术。据我们所知,这是第一篇将 CNN 硬件解决方案与 EEG 信号处理相结合的系统性综述。通过对当前挑战进行全面分析,并为未来的研究提供路线图,本文为正在发展的硬件加速 EEG 系统提供了新的视角。