Robust neural network filtering in the tasks of building intelligent interfaces

A. Vasiliev, A. Melnikov, S. Lesko
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引用次数: 1

Abstract

Objectives. In recent years, there has been growing scientific interest in the creation of intelligent interfaces for computer control based on biometric data, such as electromyography signals (EMGs), which can be used to classify human hand gestures to form the basis for organizing an intuitive human-computer interface. However, problems arising when using EMG signals for this purpose include the presence of nonlinear noise in the signal and the significant influence of individual human characteristics. The aim of the present study is to investigate the possibility of using neural networks to filter individual components of the EMG signal.Methods. Mathematical signal processing techniques are used along with machine learning methods.Results. The overview of the literature on the topic of EMG signal processing is carried out. The concept of intelligent processing of biological signals is proposed. The signal filtering model using a convolutional neural network structure based on Python 3, TensorFlow and Keras technologies was developed. Results of an experiment carried out on an EMG data set to filter individual signal components are presented and discussed.Conclusions. The possibility of using artificial neural networks to identify and suppress individual human characteristics in biological signals is demonstrated. When training the network, the main emphasis was placed on individual features by testing the network on data received from subjects not involved in the learning process. The achieved average 5% reduction in individual noise will help to avoid retraining of the network when classifying EMG signals, as well as improving the accuracy of gesture classification for new users.
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鲁棒神经网络滤波在智能接口构建中的应用
目标。近年来,科学界对基于生物特征数据(如肌电图信号)创建计算机控制智能界面的兴趣日益浓厚,肌电图信号可用于对人类手势进行分类,以形成组织直观人机界面的基础。然而,在使用肌电信号用于此目的时出现的问题包括信号中存在非线性噪声以及个人特征的显著影响。本研究的目的是探讨使用神经网络来过滤肌电图信号的各个组成部分的可能性。数学信号处理技术与机器学习方法一起使用。对肌电图信号处理的文献进行了综述。提出了生物信号智能处理的概念。基于Python 3、TensorFlow和Keras技术,开发了基于卷积神经网络结构的信号滤波模型。本文介绍并讨论了在肌电图数据集上过滤单个信号分量的实验结果。证明了利用人工神经网络识别和抑制生物信号中个体人类特征的可能性。当训练网络时,主要的重点放在单个特征上,通过测试网络从未参与学习过程的对象接收的数据。单个噪声平均降低5%有助于避免在对肌电信号进行分类时对网络进行再训练,并提高对新用户的手势分类的准确性。
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