Hefei Institutes of Physical Science, Chinese Academy of Sciences, Hefei 230031, China.
University of Science and Technology of China, Hefei 230026, China.
Sensors (Basel). 2021 Apr 5;21(7):2540. doi: 10.3390/s21072540.
In recent years, surface electromyography (sEMG)-based human-computer interaction has been developed to improve the quality of life for people. Gesture recognition based on the instantaneous values of sEMG has the advantages of accurate prediction and low latency. However, the low generalization ability of the hand gesture recognition method limits its application to new subjects and new hand gestures, and brings a heavy training burden. For this reason, based on a convolutional neural network, a transfer learning (TL) strategy for instantaneous gesture recognition is proposed to improve the generalization performance of the target network. CapgMyo and NinaPro DB1 are used to evaluate the validity of our proposed strategy. Compared with the non-transfer learning (non-TL) strategy, our proposed strategy improves the average accuracy of new subject and new gesture recognition by 18.7% and 8.74%, respectively, when up to three repeated gestures are employed. The TL strategy reduces the training time by a factor of three. Experiments verify the transferability of spatial features and the validity of the proposed strategy in improving the recognition accuracy of new subjects and new gestures, and reducing the training burden. The proposed TL strategy provides an effective way of improving the generalization ability of the gesture recognition system.
近年来,基于表面肌电(sEMG)的人机交互技术得到了发展,以提高人们的生活质量。基于 sEMG 瞬时值的手势识别具有预测准确、延迟低的优点。然而,手部手势识别方法的低泛化能力限制了其在新对象和新手势上的应用,带来了沉重的训练负担。为此,基于卷积神经网络,提出了一种用于瞬时手势识别的迁移学习(TL)策略,以提高目标网络的泛化性能。CapgMyo 和 NinaPro DB1 被用来评估我们提出的策略的有效性。与非迁移学习(non-TL)策略相比,当使用多达三个重复手势时,我们提出的策略分别将新对象和新手势识别的平均准确率提高了 18.7%和 8.74%。TL 策略将训练时间缩短了三分之一。实验验证了空间特征的可转移性以及所提出策略在提高新对象和新手势识别准确率、降低训练负担方面的有效性。所提出的 TL 策略为提高手势识别系统的泛化能力提供了一种有效的方法。