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An experimental study on upper limb position invariant EMG signal classification based on deep neural network

机译:基于深度神经网络的上肢位置不变肌电信号分类的实验研究

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摘要

The classification of surface electromyography (sEMG) signal has an important usage in the man-machine interfaces for proper controlling of prosthetic devices with multiple degrees of freedom. The vital research aspects in this field mainly focus on data acquisition, pre-processing, feature extraction and classification along with their feasibility in practical scenarios regarding implementation and reliability. In this article, we have demonstrated a detailed empirical exploration on Deep Neural Network (DNN) based classification system for the upper limb position invariant myoelectric signal. The classification of eight different hand movements is performed using a fully connected feed-forward DNN model and also compared with the existing machine learning tools. In our analysis, we have used a dataset consisting of the sEMG signals collected from eleven subjects at five different upper limb positions. The time domain power spectral descriptors (TDPSD) is used as the feature set to train the DNN classifier. In contrast to the prior methods, the proposed approach excludes the feature dimensionality reduction step, which in turn significantly reduce the overall complexity. As the EMG signal classification is a subject-specific problem, the DNN model is customized for each subject separately to get the best possible results. Our experimental results in various analysis frameworks demonstrate that DNN based system can outperform the other existing classifiers such as k-Nearest Neighbour (kNN), Random Forest, and Decision Tree. The average accuracy obtained among the five subjects for DNN, SVM, kNN, Random Forest and Decision Tree is 98.88%, 98.66%, 90.64%, 91.78%, and 88.36% respectively. Moreover, it can achieve competitive performance with the state-of-the-art SVM based model, even though the proposed DNN model requires minimal processing in feature engineering. This study provides an insight into the detailed step-by-step empirical procedure to achieve the optimum results regarding classification accuracy using the DNN model. (C) 2019 Elsevier Ltd. All rights reserved.
机译:表面肌电信号(sEMG)的分类在人机界面中具有重要用途,用于正确控制具有多个自由度的假体设备。在该领域中至关重要的研究方面主要集中在数据采集,预处理,特征提取和分类以及它们在有关实现和可靠性的实际方案中的可行性。在本文中,我们已经展示了基于深度神经网络(DNN)的上肢位置不变的肌电信号分类系统的详细经验探索。使用完全连接的前馈DNN模型对八种不同的手部动作进行分类,并与现有的机器学习工具进行比较。在我们的分析中,我们使用了一个数据集,该数据集由从五个不同的上肢位置的11位受试者收集的sEMG信号组成。时域功率谱描述符(TDPSD)用作训练DNN分类器的功能集。与现有方法相反,所提出的方法排除了特征维数降低步骤,这反过来显着降低了总体复杂度。由于EMG信号分类是一个特定于主题的问题,因此分别为每个主题定制DNN模型以获得最佳结果。我们在各种分析框架中的实验结果表明,基于DNN的系统可以胜过其他现有的分类器,例如k最近邻(kNN),随机森林和决策树。在DNN,SVM,kNN,随机森林和决策树这五个主题中获得的平均准确度分别为98.88%,98.66%,90.64%,91.78%和88.36%。而且,即使所提出的DNN模型在特征工程中需要最少的处理,它也可以使用基于最新SVM的模型获得竞争性能。这项研究提供了详细的循序渐进的经验程序的洞察力,以使用DNN模型获得有关分类精度的最佳结果。 (C)2019 Elsevier Ltd.保留所有权利。

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