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首页> 外文期刊>Advances in Science, Technology and Engineering Systems >Auto-Encoder based Deep Learning for Surface Electromyography Signal Processing
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Auto-Encoder based Deep Learning for Surface Electromyography Signal Processing

机译:基于自动编码器的深度学习用于表面肌电信号处理

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Feature extraction is taking a very vital and essential part of bio-signal processing. We need to choose one of two paths to identify and select features in any system. The most popular track is engineering handcrafted, which mainly depends on the user experience and the field of application. While the other path is feature learning, which depends on training the system on recognising and picking the best features that match the application. The main concept of feature learning is to create a model that is expected to be able to learn the best features without any human intervention instead of recourse the traditional methods for feature extraction or reduction and avoid dealing with feature extraction that depends on researcher experience. In this paper, Auto-Encoder will be utilised as a feature learning algorithm to practice the recommended model to excerpt the useful features from the surface electromyography signal. Deep learning method will be suggested by using Auto-Encoder to learn features. Wavelet Packet, Spectrogram, and Wavelet will be employed to represent the surface electromyography signal in our recommended model. Then, the newly represented bio-signal will be fed to stacked autoencoder (2 stages) to learn features and finally, the behaviour of the proposed algorithm will be estimated by hiring different classifiers such as Extreme Learning Machine, Support Vector Machine, and SoftMax Layer. The Rectified Linear Unit (ReLU) will be created as an activation function for extreme learning machine classifier besides existing functions such as sigmoid and radial basis function. ReLU will show a better classification ability than sigmoid and Radial basis function (RBF) for wavelet, Wavelet scale 5 and wavelet packet signal representations implemented techniques. ReLU will illustrate better classification ability, as an activation function, than sigmoid and poorer than RBF for spectrogram signal representation. Both confidence interval and Analysis of Variance will be estimated for different classifiers. Classifier fusion layer will be implemented to glean the classifier which will progress the best accuracies’ values for both testing and training to develop the results. Classifier fusion layer brought an encouraging value for both accuracies either training or testing ones.
机译:特征提取在生物信号处理中占据着非常重要的基础部分。我们需要选择两条路径之一来识别和选择任何系统中的功能。最受欢迎的曲目是手工制作的工程作品,主要取决于用户体验和应用领域。另一个途径是功能学习,它依赖于培训系统以识别和选择与应用程序匹配的最佳功能。特征学习的主要概念是创建一个期望能够在没有任何人工干预的情况下学习最佳特征的模型,而不是求助于传统的特征提取或简化方法,并避免依赖于研究人员的经验来处理特征提取。在本文中,将使用自动编码器作为特征学习算法来实践推荐的模型,以从表面肌电信号中提取有用的特征。将建议使用自动编码器来学习功能的深度学习方法。小波包,频谱图和小波将用于表示我们推荐模型中的表面肌电信号。然后,将新表示的生物信号馈送到堆叠式自动编码器(2个阶段)以学习特征,最后,将通过雇用不同的分类器(例如极限学习机,支持向量机和SoftMax层)来估计所提出算法的行为。 。除了现有功能(例如S型和径向基函数)之外,还将创建整流线性单元(ReLU)作为极端学习机分类器的激活功能。对于小波,小波尺度5和小波包信号表示实现的技术,ReLU将显示出比S型和径向基函数(RBF)更好的分类能力。 ReLU将显示出比S型更好的分类功能(作为激活函数),并且比RBF的频谱图信号表示能力差。对于不同的分类器,将估计置信区间和方差分析。分类器融合层将被实施以收集分类器,分类器将在测试和训练中取得最佳精度值,以得出结果。分类器融合层为训练或测试的两种精度带来了令人鼓舞的价值。

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