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Cross-Individual Gesture Recognition Based on Long Short-Term Memory Networks

机译:基于长短期内存网络的跨个体手势识别

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Gestures recognition based on surface electromyography (sEMG) has been widely used for human-computer interaction. However, there are few research studies on overcoming the influence of physiological factors among different individuals. In this paper, a cross-individual gesture recognition method based on long short-term memory (LSTM) networks is proposed, named cross-individual LSTM (CI-LSTM). CI-LSTM has a dual-network structure, including a gesture recognition module and an individual recognition module. By designing the loss function, the individual information recognition module assists the gesture recognition module to train, which tends to orthogonalize the gesture features and individual features to minimize the impact of individual information differences on gesture recognition. Through cross-individual gesture recognition experiments, it is verified that compared with other selected algorithm models, the recognition accuracy obtained by using the CI-LSTM model can be improved by an average of 9.15%. Compared with other models, CI-LSTM can overcome the influence of individual characteristics and complete the task of cross-individual hand gestures recognition. Based on the proposed model, online control of the prosthetic hand is realized.
机译:基于表面肌电图(SEMG)的手势识别已被广泛用于人计算机相互作用。然而,克服不同个体之间生理因素的影响,很少有研究。在本文中,提出了一种基于长短期存储器(LSTM)网络的跨单独手势识别方法,命名为交叉单独的LSTM(CI-LSTM)。 CI-LSTM具有双网络结构,包括手势识别模块和单个识别模块。通过设计损耗函数,各个信息识别模块有助于训练手势识别模块,这倾向于正交地使手势特征和单独的特征能够最小化在手势识别上的各个信息差的影响。通过交叉单独的手势识别实验,验证与其他所选算法模型相比,通过使用CI-LSTM模型获得的识别精度可以平均提高9.15%。与其他模型相比,CI-LSTM可以克服各个特征的影响并完成交流手势识别的任务。基于所提出的模型,实现了对假肢手的在线控制。

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