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李敏

副教授

基本信息 / Basic Information

  • 电子邮箱:
  • 所在单位: 机械工程学院
  • 学历: 博士研究生毕业
  • 办公地点:
  • 性别: 女
  • 联系方式:
  • 学位: 博士
  • 在职信息: 在职
  • 毕业院校: 伦敦国王学院
  • 博士生导师: 是
  • 硕士生导师: 是
  • 所属院系: 机械工程学院

论文成果

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A CNN-LSTM Model for Six Human Ankle Movements Classification on Different Loads

发布时间:2025-04-30
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发布时间:
2025-04-30
论文名称:
A CNN-LSTM Model for Six Human Ankle Movements Classification on Different Loads
发表刊物:
Frontiers in Human Neuroscience
摘要:
This study aims to address three problems in current studies in decoding the ankle movement intention for robot-assisted bilateral rehabilitation using surface electromyogram (sEMG) signals: (1) only up to four ankle movements could be identified while six ankle movements should be classified to provide better training; (2) feeding the raw sEMG signals directly into the neural network leads to high computational cost; and (3) load variation has large influence on classification accuracy. To achieve this, a convolutional neural network (CNN)—long short-term memory (LSTM) model, a time-domain feature selection method of the sEMG, and a two-step method are proposed. For the first time, the Boruta algorithm is used to select time-domain features of sEMG. The selected features, rather than raw sEMG signals are fed into the CNN-LSTM model. Hence, the number of model’s parameters is reduced from 331,938 to 155,042, by half. Experiments are conducted to validate the proposed method. The results show that our method could classify six ankle movements with relatively good accuracy (95.73%). The accuracy of CNN-LSTM, CNN, and LSTM models with sEMG features as input are all higher than that of corresponding models with raw sEMG as input. The overall accuracy is improved from 73.23% to 93.50% using our two-step method for identifying the ankle movements with different loads. Our proposed CNN-LSTM model have the highest accuracy for ankle movements classification compared with CNN, LSTM, and Support Vector Machine (SVM).
合写作者:
Min Li, Jiale Wang, Shiqi Yang, Jun Xie, Guanghua Xu and Shan Luo
卷号:
17
是否译文:
发表时间:
2023-03-08