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Dynamic Gesture Recognition Based on LSTM-CNN

机译:基于LSTM-CNN的动态手势识别

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The current research on using surface electromyography (sEMG) for gesture recognition mainly focuses on designing EMG signal features, decent feature designs can significantly improve the result. Nevertheless, the process of designing and selecting features can be complicated, as well as the precision of recognition for different features will be largely different even for the same model. Therefore, in this paper, we take advantage of the complementarity of Long Short-term Memory (LSTM) and Convolution Neural Networks (CNNs) by combining them into one unified architecture, which we call LSTM-CNN (LCNN). This model can directly input preprocessed EMG signal into the network for dynamic recognition of gestures. The LSTM model is used to extract timing information in signals. The CNN model can perform a secondary feature extraction and signal classification. In the experiment stage, the average recognition accuracy of LCNN can achieve 98.14%. As the experiment showed, LCNN model is feasible on dynamic gesture recognition based on sEMG signal.
机译:目前关于使用表面肌电图(sEMG)进行手势识别的研究主要集中在设计EMG信号特征上,体面的特征设计可以显着改善结果。然而,设计和选择特征的过程可能会很复杂,而且即使对于同一模型,对不同特征的识别精度也会有很大差异。因此,在本文中,我们通过将长短期记忆(LSTM)和卷积神经网络(CNN)组合成一个统一的架构,即LSTM-CNN(LCNN),来利用它们的互补性。该模型可以将预处理的EMG信号直接输入到网络中以动态识别手势。 LSTM模型用于提取信号中的时序信息。 CNN模型可以执行辅助特征提取和信号分类。在实验阶段,LCNN的平均识别准确率可以达到98.14%。实验表明,LCNN模型在基于sEMG信号的动态手势识别中是可行的。

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