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Multi-object intergroup gesture recognition combined with fusion feature and KNN algorithm

机译:多对象Intergrom手势识别与融合特征和KNN算法相结合

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摘要

SEMG signal is a bioelectrical signal produced by the contraction of human surface muscles. Human-computer interaction based on SEMG signal is of great significance in the field of rehabilitation robots. In this study, a feature extraction method of SEMG signal based on activated muscle regionis proposed, which is based on the study of activated muscle regionin human forearm and hand movement. At the same time, the main research object of this study is the multi-object intergroup SEMG signal which is closer to the practical application environment. The new feature extracted is fused with the sample entropy feature and the wavelength feature to obtain better signal features. After combining the fusion feature with KNN algorithm, the hand motion pattern recognition and classification between multi-object groups is carried out. The combination of the fusion feature and KNN classification algorithm can achieve 91.05% in the multi-object intergroup hand motion classification. This method has lower computational cost without expensive hardware support, and improves the robustness of hand motion recognition based on EMG signals.
机译:SEMG信号是由人类表面肌肉收缩产生的生物电信号。基于SEMG信号的人机相互作用在康复机器人领域具有重要意义。本研究中,基于活性肌肉区域的SEMG信号的特征提取方法,基于活化肌肉区域人前臂和手工运动的研究。与此同时,本研究的主要研究对象是多对象互动SEMG信号,其更靠近实际应用环境。提取的新功能与样本熵特征和波长特征融合,以获得更好的信号功能。在用KNN算法组合融合特征之后,执行多对象组之间的手动模式识别和分类。融合特征和KNN分类算法的组合可以在多对象互动手动分类中实现91.05%。该方法具有较低的计算成本,无需昂贵的硬件支持,并基于EMG信号提高手动识别的鲁棒性。

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