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基于深度学习的中风后肌电手势识别:从特征构建到网络设计

Deep Learning Based Post-stroke Myoelectric Gesture Recognition: From Feature Construction to Network Design.

作者信息

Bao Tianzhe, Lu Zhiyuan, Zhou Ping

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2024 Dec 23;PP. doi: 10.1109/TNSRE.2024.3521583.

DOI:10.1109/TNSRE.2024.3521583
PMID:40030685
Abstract

Recently, robot-assisted rehabilitation has emerged as a promising solution to increase the training intensity of stroke patients while reducing workload on therapists, whilst surface electromyography (sEMG) is expected to serve as a viable control source. In this paper, we delve into the potential of deep learning (DL) for post-stroke hand gesture recognition by collecting the sEMG signals of eight chronic stroke subjects, focusing on three primary aspects: feature domains of sEMG (time, frequency, and wavelet), data structures (one or two-dimensional images), and neural network architectures (CNN, CNN-LSTM, and CNN-LSTM-Attention). A total of 18 DL models were comprehensively evaluated in both intra-subject testing and inter-subject transfer learning tasks, with two post-processing algorithms (Model Voting and Bayesian Fusion) analysed subsequently. Experiment results infer that for intra-subject testing, the average accuracy of CNN-LSTM using two-dimensional frequency features is the highest, reaching 72.95%. For inter-subject transfer learning, the average accuracy of CNN-LSTM-Attention using one-dimensional frequency features is the highest, reaching 68.38%. Through these two experiments, it was found that frequency features had significant advantages over other features in gesture recognition after stroke. Moreover, the post-processing algorithm can further improve the recognition accuracy, and the recognition effect can be increased by 2.03% through the model voting algorithm.

摘要

最近,机器人辅助康复已成为一种很有前景的解决方案,可提高中风患者的训练强度,同时减轻治疗师的工作量,而表面肌电图(sEMG)有望成为一种可行的控制源。在本文中,我们通过收集八名慢性中风患者的sEMG信号,深入研究深度学习(DL)在中风后手手势识别方面的潜力,重点关注三个主要方面:sEMG的特征域(时间、频率和小波)、数据结构(一维或二维图像)以及神经网络架构(CNN、CNN-LSTM和CNN-LSTM-Attention)。在受试者内测试和受试者间转移学习任务中,对总共18个DL模型进行了全面评估,随后分析了两种后处理算法(模型投票和贝叶斯融合)。实验结果表明,在受试者内测试中,使用二维频率特征的CNN-LSTM的平均准确率最高,达到72.95%。在受试者间转移学习中,使用一维频率特征的CNN-LSTM-Attention的平均准确率最高,达到68.38%。通过这两个实验发现,频率特征在中风后手势识别方面比其他特征具有显著优势。此外,后处理算法可以进一步提高识别准确率,通过模型投票算法可将识别效果提高2.03%。

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