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Continuous and recurrent pattern dynamic neural networks recognition of electrophysiological signals

机译:连续和循环模式动态神经网络对电生理信号的识别

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In the last few years, recurrent and continuous algorithms have became key factors in the solution of diverse pattern recognition problems. The main goal of this study is to introduce four classes of recurrent and continuous artificial neural networks (ANN) that can be implemented for pattern recognition of electrophysiological signals. Such networks are generally known as dynamic neural networks (DNN). The proposed DNN based pattern recognizer uses biosignals raw data as input. This processing method allows capturing the signal time dynamics, which is considered as an intrinsic characteristic of physiology signals. Therefore, recurrent and differential ANN structures were developed to construct different versions of dynamic automatic pattern recognizer. The first one describes the application of Recurrent Neural Networks (RNN) to enforce the biosignal analysis which evolves over time with a fixed sampling period. Three different DNNs with continuous dynamics are introduced. Differential neural network (DifNN) with the capability of learning the evolution of the signal in continuous time, a time-delay neural network (TDNN) for classification is implemented to consider the time-delayed characteristics of the electrophysiological signals and a complex valued neural network (CVNN) which considered the signals to be classified may be pre-processed with a frequency analysis technique. Two different databases of diverse physiological signals are used in this study to validate the application of dynamic neural networks. A first database considers electromiographic (EMG) signals which are tested using the DifNN, TDNN and CVNN. The second database includes gait in Parkinson's disease database signals which are used in the evaluation procedure of RNN. Two validation methods are used to justify the application of dynamic ANNs as pattern recognizer for the EMG activities and the health level classification of patients suffering from Parkinson's: generalization-regularization and the k-fold cross validation. The accuracy estimation and the confusion matrix evaluation confirm the superiority of the proposed approach compared to classical feed-forward ANN pattern recognizer. The particular case of the RNN is also implemented in a 32-bits micro-controller embedded device. (C) 2019 Elsevier Ltd. All rights reserved.
机译:在过去的几年中,循环和连续算法已成为解决各种模式识别问题的关键因素。这项研究的主要目的是介绍四类递归和连续人工神经网络(ANN),它们可以用于电生理信号的模式识别。这样的网络通常称为动态神经网络(DNN)。提出的基于DNN的模式识别器使用生物信号原始数据作为输入。这种处理方法允许捕获信号时间动态,这被认为是生理信号的固有特征。因此,开发了递归和差分ANN结构来构造动态自动模式识别器的不同版本。第一个描述了递归神经网络(RNN)的应用,以加强生物信号分析,该信号随着固定采样周期的变化而发展。介绍了三种具有连续动力学的DNN。具有学习连续时间信号演化能力的微分神经网络(DifNN),实现了用于分类的时延神经网络(TDNN),以考虑电生理信号的时延特性和复杂值神经网络可以使用频率分析技术对考虑了要分类的信号的(CVNN)进行预处理。在这项研究中使用两个不同的生理信号数据库来验证动态神经网络的应用。第一个数据库考虑使用DifNN,TDNN和CVNN测试的电子照相(EMG)信号。第二数据库在帕金森氏病数据库信号中包括步态,该信号用于RNN的评估程序。两种验证方法被用来证明动态ANNs作为EMG活动和帕金森氏病患者健康水平分类的模式识别器的应用:泛化-正规化和k倍交叉验证。与经典前馈ANN模式识别器相比,准确性估计和混淆矩阵评估证实了该方法的优越性。 RNN的特殊情况也可以在32位微控制器嵌入式设备中实现。 (C)2019 Elsevier Ltd.保留所有权利。

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