4.6 Article

Hand Gesture Recognition based on Surface Electromyography using Convolutional Neural Network with Transfer Learning Method

Journal

IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS
Volume 25, Issue 4, Pages 1292-1304

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JBHI.2020.3009383

Keywords

Training; Thumb; Electromyography; Gesture recognition; Elbow; Wrist; CNN; gesture recognition; HD-sEMG; myoelectric control; transfer learning

Funding

  1. National Nature Science Foundation of China [61871360, 61671417]

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This paper introduces an effective transfer learning strategy to improve gesture recognition accuracy and decrease training burden. The strategy performs well on different datasets, significantly enhancing recognition accuracy and greatly reducing training time.
This paper presents an effective transfer learning (TL) strategy for the realization of surface electromyography (sEMG)-based gesture recognition with high generalization and low training burden. To realize the idea of taking a well-trained model as the feature extractor of the target networks, 30 hand gestures involving various states of finger joints, elbow joint and wrist joint are selected to compose the source task, and a convolutional neural network (CNN)-based source network is designed and trained as the general gesture EMG feature extraction network. Then, two types of target networks, in the forms of CNN-only and CNN+LSTM (long short-term memory) respectively, are designed with the same CNN architecture as the feature extraction network. Finally, gesture recognition experiments on three different target gesture datasets are carried out under TL and Non-TL strategies respectively. The experimental results verify the validity of the proposed TL strategy in improving hand gesture recognition accuracy and reducing training burden. For both the CNN-only and the CNN+LSTM target networks, on the three target datasets from new users, new gestures and different collection scheme, the proposed TL strategy improves the recognition accuracy by 10%similar to 38%, reduces the training time to tens of times, and guarantees the recognition accuracy of more than 90% when only 2 repetitions of each gesture are used to fine-tune the parameters of target networks. The proposed TL strategy has important application value for promoting the development of myoelectric control systems.

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