Efficient Hardware and Software Co-design for EEG Signal Classification based on Extreme Learning Machine

Songyang Lyu, M. Chowdhury, Ray C. C. Cheung
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引用次数: 2

Abstract

ElectroEncephaloGram (EEG) is associated with multiple functions, including communications with neurons, organic monitoring, and interactions with external stimuli. By decoding EEG signals, certain human activities such as sleeping, brain diseases, motor imagery, movement of limbs, and others can be observed and controlled through the brain-computer interface (BCI). Therefore, it is vital to efficiently process EEG signals with a robust and accurate system to build BCI systems with powerful applications. However, as a weak biosignal, EEG demands a fast-reaction system signal processing with high accuracy and sensitivity. In this work, a hardware/software co-design network based on Extreme Learning Machine (ELM) is introduced for the classification of certain actions, motor imagery of the human brain. This system is based on an optimized Hierarchical Extreme Learning Machine (H-ELM) on the software layer. The proposed method has advantages over previous designs with an accuracy of 90.3%. It also improves the training speed by around 25X compared to conventional methods. The software model is also translated into efficient FPGA hardware design to maintain high computation efficiency and reduce power consumption for biomedical applications.
基于极限学习机的高效脑电信号分类软硬件协同设计
脑电图(EEG)与多种功能相关,包括与神经元的通信,有机监测以及与外部刺激的相互作用。通过解码脑电图信号,可以通过脑机接口(BCI)观察和控制某些人类活动,如睡眠、脑部疾病、运动图像、肢体运动等。因此,构建具有强大应用价值的脑机接口(BCI)系统,必须对脑电信号进行有效的鲁棒性和准确性处理。然而,脑电图作为一种微弱的生物信号,需要快速反应的系统信号处理,具有较高的准确性和灵敏度。在这项工作中,引入了一个基于极限学习机(ELM)的硬件/软件协同设计网络,用于对人类大脑的某些动作和运动图像进行分类。该系统基于软件层优化的层次极限学习机(H-ELM)。与以往的设计相比,该方法具有精度达90.3%的优点。与传统方法相比,它还将训练速度提高了约25倍。该软件模型还转化为高效的FPGA硬件设计,以保持高计算效率并降低生物医学应用的功耗。
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