An Efficient Group Federated Learning Framework for Large-Scale EEG-Based Driver Drowsiness Detection.

International journal of neural systems Pub Date : 2024-01-01 Epub Date: 2023-11-15 DOI:10.1142/S0129065724500035
Xinyuan Chen, Yi Niu, Yanna Zhao, Xue Qin
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Abstract

To avoid traffic accidents, monitoring the driver's electroencephalogram (EEG) signals to assess drowsiness is an effective solution. However, aggregating the personal data of these drivers may lead to insufficient data usage and pose a risk of privacy breaches. To address these issues, a framework called Group Federated Learning (Group-FL) for large-scale driver drowsiness detection is proposed, which can efficiently utilize diverse client data while protecting privacy. First, by arranging the clients into different levels of groups and gradually aggregating their model parameters from low-level groups to high-level groups, communication and time costs are reduced. In addition, to solve the problem of notable variations in EEG signals among different clients, a global-personalized deep neural network is designed. The global model extracts shared features from various clients, while the personalized model extracts fine-grained features from each client and outputs classification results. Finally, to address special issues such as scale/category imbalance and data pollution, three checking modules are designed for adjusting grouping, evaluating client data, and effectively applying personalized models. Through extensive experimentation, the effectiveness of each component within the framework was validated, and a mean accuracy, F1-score, and Area Under Curve (AUC) of 81.0%, 82.0%, and 87.9% was achieved, respectively, on a publicly available dataset comprising 11 subjects.

基于脑电图的大规模驾驶员困倦检测的高效组联邦学习框架。
为了避免交通事故的发生,监测驾驶员的脑电图信号来评估困倦程度是一种有效的解决方案。然而,汇总这些司机的个人数据可能会导致数据使用不足,并带来隐私泄露的风险。为了解决这些问题,提出了一种用于大规模驾驶员困倦检测的小组联邦学习(Group- fl)框架,该框架可以在保护隐私的同时有效地利用各种客户端数据。首先,通过将客户端划分到不同层次的群组中,并将其模型参数从低级群组逐步聚合到高级群组,减少通信成本和时间成本。此外,针对不同客户端脑电信号差异较大的问题,设计了全局个性化的深度神经网络。全局模型从各个客户端提取共享特征,个性化模型从每个客户端提取细粒度特征并输出分类结果。最后,针对规模/类别失衡、数据污染等特殊问题,设计了三个检查模块,用于调整分组、评估客户数据和有效应用个性化模型。通过广泛的实验,验证了框架内每个组件的有效性,在包含11个受试者的公开数据集上,平均准确率、f1得分和曲线下面积(AUC)分别达到81.0%、82.0%和87.9%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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