基于运动图像的脑机接口的深度学习识别模型

IF 1 4区 工程技术 Q4 INSTRUMENTS & INSTRUMENTATION
S. Rajalakshmi, Ibrahim AlMohimeed, Mohamed Yacin Sikkandar, S. Sabarunisha Begum
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引用次数: 0

摘要

脑机接口(bci)有助于将大脑活动转化为可操作的命令,并作为人脑与外部环境之间的关键联系。以脑电图(EEG)为基础的脑机接口(bci)主要研究运动图像,已成为该领域的一个重要研究领域。它们被用于神经康复、神经修复和游戏等领域。基于最优深度学习的脑电信号运动图像识别(ODLR-EEGSM)是本文提出的一种新方法,旨在提高脑电信号对运动图像的识别。该方法包括几个关键步骤,以提高基于脑电图的运动图像识别的精度和有效性。预处理阶段从变模分解(VMD)技术开始,该技术用于改进脑电信号。通过VMD将脑电信号分解成不同的振荡模式,为后续特征提取奠定基础。特征提取是ODLR-EEGSM方法的重要组成部分。在这项研究中,我们使用堆叠稀疏自动编码器(SSAE)模型来识别预处理脑电图数据中的重要模式。该方法基于基于混沌蜻蜓算法(CDFA)优化的深度小波神经网络(DWNN)分类模型。CDFA优化了DWNN的权值和偏置值,显著提高了运动图像的分类精度。为了评估ODLR-EEGSM方法的有效性,我们使用基准数据集进行严格的性能验证。结果表明,该方法在脑电运动图像分类方面优于现有方法,证实了其良好的性能。这项研究有可能使脑机接口在各个领域的应用更加准确和高效,并为大脑控制与外部系统和设备的交互铺平道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Deep Learning-Based Recognition Model for EEG Enabled Brain-Computer Interfaces Using Motor-Imagery
Brain-Computer Interfaces (BCIs) facilitate the translation of brain activity into actionable commands and act as a crucial link between the human brain and the external environment. Electroencephalography (EEG)-based BCIs, which focus on motor imagery, have emerged as an important area of study in this domain. They are used in neurorehabilitation, neuroprosthetics, and gaming, among other applications. Optimal Deep Learning-Based Recognition for EEG Signal Motor Imagery (ODLR-EEGSM) is a novel approach presented in this article that aims to improve the recognition of motor imagery from EEG signals. The proposed method includes several crucial stages to improve the precision and effectiveness of EEG-based motor imagery recognition. The pre-processing phase starts with the Variation Mode Decomposition (VMD) technique, which is used to improve EEG signals. The EEG signals are decomposed into different oscillatory modes by VMD, laying the groundwork for subsequent feature extraction. Feature extraction is a crucial component of the ODLR-EEGSM method. In this study, we use Stacked Sparse Auto Encoder (SSAE) models to identify significant patterns in the pre-processed EEG data. Our approach is based on the classification model using Deep Wavelet Neural Network (DWNN) optimized with Chaotic Dragonfly Algorithm (CDFA). CDFA optimizes the weight and bias values of the DWNN, significantly improving the classification accuracy of motor imagery. To evaluate the efficacy of the ODLR-EEGSM method, we use benchmark datasets to perform rigorous performance validation. The results show that our approach outperforms current methods in the classification of EEG motor imagery, confirming its promising performance. This study has the potential to make brain-computer interface applications in various fields more accurate and efficient, and pave the way for brain-controlled interactions with external systems and devices.
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来源期刊
Measurement Science Review
Measurement Science Review INSTRUMENTS & INSTRUMENTATION-
CiteScore
2.00
自引率
11.10%
发文量
37
审稿时长
4.8 months
期刊介绍: - theory of measurement - mathematical processing of measured data - measurement uncertainty minimisation - statistical methods in data evaluation and modelling - measurement as an interdisciplinary activity - measurement science in education - medical imaging methods, image processing - biosignal measurement, processing and analysis - model based biomeasurements - neural networks in biomeasurement - telemeasurement in biomedicine - measurement in nanomedicine - measurement of basic physical quantities - magnetic and electric fields measurements - measurement of geometrical and mechanical quantities - optical measuring methods - electromagnetic compatibility - measurement in material science
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