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

IF 4.8 2区 医学 Q2 ENGINEERING, BIOMEDICAL
Tianzhe Bao;Zhiyuan Lu;Ping Zhou
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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.
基于深度学习的卒中后肌电手势识别:从特征构建到网络设计
最近,机器人辅助康复已经成为一种有希望的解决方案,可以增加中风患者的训练强度,同时减少治疗师的工作量,而表面肌电图(sEMG)有望成为一种可行的控制来源。在本文中,我们通过收集8名慢性中风受试者的表面肌电信号,深入研究了深度学习(DL)在中风后手势识别中的潜力,重点关注三个主要方面:表面肌电信号的特征域(时间、频率和小波)、数据结构(一维或二维图像)和神经网络架构(CNN、CNN- lstm和CNN- lstm - attention)。在主题内测试和主题间迁移学习任务中,对18个DL模型进行了综合评估,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%。对于跨主题迁移学习,使用一维频率特征的CNN-LSTM-Attention平均正确率最高,达到68.38%。通过这两个实验,我们发现频率特征在中风后的手势识别中比其他特征具有显著的优势。此外,后处理算法可以进一步提高识别精度,通过模型投票算法,识别效果可提高2.03%。
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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来源期刊
CiteScore
8.60
自引率
8.20%
发文量
479
审稿时长
6-12 weeks
期刊介绍: Rehabilitative and neural aspects of biomedical engineering, including functional electrical stimulation, acoustic dynamics, human performance measurement and analysis, nerve stimulation, electromyography, motor control and stimulation; and hardware and software applications for rehabilitation engineering and assistive devices.
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