干式脑电运动成像脑机接口三维卷积神经网络参数优化。

IF 3.2 3区 医学 Q2 NEUROSCIENCES
Frontiers in Neuroscience Pub Date : 2025-02-25 eCollection Date: 2025-01-01 DOI:10.3389/fnins.2025.1469244
Nobuaki Kobayashi, Musashi Ino
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引用次数: 0

摘要

放宽那些需要照顾的人的行为限制,不仅可以提高他们自己的生活质量(QoL),还可以减轻护理人员的负担,并可能有助于减少出生率下降国家的护理人员数量。脑机接口(BMI),其中设备和机器仅由大脑活动控制,可用于护理环境,以减轻行为限制和减轻需要护理的人的压力。预计这也将减少护理人员的工作量。在这项研究中,我们将重点放在通过深度学习对运动图像(MI)进行分类,以构建一个能够以高精度和低延迟反应识别由脑电图(EEG)测量获得的MI的系统。通过在边缘完成系统,可以保证个人MI数据的私密性,系统无所不在,提高了用户的便利性。但另一方面,边缘受硬件资源的限制,在边缘上实现参数数量庞大、计算成本高的模型(如深度学习)具有挑战性。因此,我们通过优化深度学习模型的MI测量条件和各种参数,试图在保持较高分类精度的同时,通过最小化计算成本来降低功耗,提高系统的响应延迟。此外,我们还研究了三维卷积神经网络(3D CNN)的使用,该网络可以保留空间局域性作为特征,以进一步提高分类精度。我们提出了一种通过优化核的大小和数量以及层结构来保持高分类精度的方法,同时在边缘上进行处理。此外,为了开发一个实用的BMI系统,我们引入了更适合日常使用的干电极,并优化了所提出模型的参数数量和内存消耗大小,即使在更少的电极、更少的召回时间和更低的采样率下也能保持分类精度。与EEGNet相比,本文提出的3D CNN在保持4类干脑电MI在8个电极、3.5秒样本窗大小和125 Hz采样率条件下的分类精度的同时,将参数数量、乘法累加次数和内存占用分别减少了约75.9%、16.3%和12.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parameter optimization of 3D convolutional neural network for dry-EEG motor imagery brain-machine interface.

Easing the behavioral restrictions of those in need of care not only improves their own quality of life (QoL) but also reduces the burden on care workers and may help reduce the number of care workers in countries with declining birthrates. The brain-machine interface (BMI), in which appliances and machines are controlled only by brain activity, can be used in nursing care settings to alleviate behavioral restrictions and reduce stress for those in need of care. It is also expected to reduce the workload of care workers. In this study, we focused on motor imagery (MI) classification by deep-learning to construct a system that can identify MI obtained by electroencephalography (EEG) measurements with high accuracy and a low latency response. By completing the system on the edge, the privacy of personal MI data can be ensured, and the system is ubiquitous, which improves user convenience. On the other hand, however, the edge is limited by hardware resources, and the implementation of models with a huge number of parameters and high computational cost, such as deep-learning, on the edge is challenging. Therefore, by optimizing the MI measurement conditions and various parameters of the deep-learning model, we attempted to reduce the power consumption and improve the response latency of the system by minimizing the computational cost while maintaining high classification accuracy. In addition, we investigated the use of a 3-dimension convolutional neural network (3D CNN), which can retain spatial locality as a feature to further improve the classification accuracy. We propose a method to maintain a high classification accuracy while enabling processing on the edge by optimizing the size and number of kernels and the layer structure. Furthermore, to develop a practical BMI system, we introduced dry electrodes, which are more comfortable for daily use, and optimized the number of parameters and memory consumption size of the proposed model to maintain classification accuracy even with fewer electrodes, less recall time, and a lower sampling rate. Compared to EEGNet, the proposed 3D CNN reduces the number of parameters, the number of multiply-accumulates, and memory footprint by approximately 75.9%, 16.3%, and 12.5%, respectively, while maintaining the same level of classification accuracy with the conditions of eight electrodes, 3.5 seconds sample window size, and 125 Hz sampling rate in 4-class dry-EEG MI.

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来源期刊
Frontiers in Neuroscience
Frontiers in Neuroscience NEUROSCIENCES-
CiteScore
6.20
自引率
4.70%
发文量
2070
审稿时长
14 weeks
期刊介绍: Neural Technology is devoted to the convergence between neurobiology and quantum-, nano- and micro-sciences. In our vision, this interdisciplinary approach should go beyond the technological development of sophisticated methods and should contribute in generating a genuine change in our discipline.
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