基于表面肌电信号的深度注意学习手势识别

Huanjun Zhao, Bin Zheng, Le Wang
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引用次数: 1

摘要

人体前臂表面肌电信号(sEMG)与手势活动有关,通过分析识别前臂表面肌电信号可以预测人体的运动意图。深度学习因其能够提取深度特征而被广泛应用于手势识别研究。在此基础上,本文引入了注意机制,对不同的信道分配权重,使模型的获取更依赖于某些显式信道,从而获得性能更好的模型。与其他模型相比,本文提出的模型不仅参数较少,而且在私有数据集上的实验准确率高达99.6%,与目前一些分类效果良好的CNN网络模型相当;在较小数据集的情况下,该模型仍能保持95%以上的准确率,具有良好的适应性。
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Deep Learning with Attention on Hand Gesture Recognition Based on sEMG
The human forearm Surface Electromyography signal (sEMG) is related to gesture activities, and the human body movement intention can be predicted by analyzing and identifying the forearm sEMG signal. Deep learning has been widely used in gesture recognition research because of its ability to extract deep features. On this basis, this paper introduces an attention mechanism to assign weights to different channels, so that the acquisition of the model is more dependent on some explicit channels to obtain a model with better performance. Compared with other models, the model proposed in this paper not only has fewer parameters, but the experimental accuracy rate on private datasets can reach up to 99.6%, which is comparable to some current CNN network models with good classification effects; In the case of the smaller datasets, the model can still maintain more than 95% accuracy and has good adaptability.
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