利用机器学习和混合双向 LSTM-GRU 模型,基于脑电图左右手自主运动的虚拟脑机接口键盘

Biplov Paneru, Bishwash Paneru, Sanjog Chhetri Sapkota
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引用次数: 0

摘要

这项研究的重点是基于脑电图的 BMI,用于检测自愿按键,目的是开发一种可靠的脑机接口(BCI)来模拟和预测按键,尤其是针对运动障碍患者。该方法包括广泛的分割、事件对齐、ERP图谱分析和信号分析。通过训练不同的深度学习模型,将脑电图数据分为三类--"休息状态"(0)、"d "键按下(1)和 "l "键按下(2)。通过与基于 tkinter 的图形用户界面集成,可以基于神经活动进行实时按键模拟。特征工程利用了ERP窗口,SVC模型在事件分类中达到了90.42%的准确率。此外,还为 BCI 键盘模拟开发了深度学习模型--MLP(准确率 89%)、Catboost(准确率 87.39%)、KNN(准确率 72.59%)、高斯 NaiveBayes(准确率 79.21%)、逻辑回归(准确率 90.81%),以及新型双向 LSTM-GRU 混合模型(准确率 89%)。最后,还创建了一个图形用户界面,用于使用训练有素的 MLP 模型预测和模拟击键。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EEG Right & Left Voluntary Hand Movement-based Virtual Brain-Computer Interfacing Keyboard with Machine Learning and a Hybrid Bi-Directional LSTM-GRU Model
This study focuses on EEG-based BMI for detecting voluntary keystrokes, aiming to develop a reliable brain-computer interface (BCI) to simulate and anticipate keystrokes, especially for individuals with motor impairments. The methodology includes extensive segmentation, event alignment, ERP plot analysis, and signal analysis. Different deep learning models are trained to classify EEG data into three categories -- `resting state' (0), `d' key press (1), and `l' key press (2). Real-time keypress simulation based on neural activity is enabled through integration with a tkinter-based graphical user interface. Feature engineering utilized ERP windows, and the SVC model achieved 90.42% accuracy in event classification. Additionally, deep learning models -- MLP (89% accuracy), Catboost (87.39% accuracy), KNN (72.59%), Gaussian Naive Bayes (79.21%), Logistic Regression (90.81% accuracy), and a novel Bi-Directional LSTM-GRU hybrid model (89% accuracy) -- were developed for BCI keyboard simulation. Finally, a GUI was created to predict and simulate keystrokes using the trained MLP model.
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