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A novel octopus based Parkinson's disease and gender recognition method using vowels

机译:一种基于章鱼的新型帕金森氏病和基于元音的性别识别方法

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摘要

The Parkinson's disease (PD) is one of the widely seen and most important neurological disorders worldwide. With the development of the technology, many machine learning methods have been presented to recognize PD automatically. In order to recognize PD and gender, vowels have been widely used and many papers have been presented for solving these problems in the literature. In this study, a novel octopus based feature extraction network is presented and the proposed octopus is a multiple pooling method. In this method, minimum, maximum, maximum-minimum, average, variance, median, skewness and kurtosis pooling methods are used. These eight pooling methods consist the leg of the octopus. In this article, a vowel recognition method is proposed using the proposed octopus pooling method. The proposed method contains preprocessing, feature extraction, feature selection, classification and post processing phases. In the preprocessing, the proposed octopus method is applied to signal to generate octopus signal. Singular Value Decomposition (SVD) is utilized as feature extractor and the features are extracted using original vowel signal and the signals of the octopus. In order to feature selection, neighborhood component analysis (NCA) is used to remove redundant features. In the classification phase, support vector machine with various activation functions (linear, cubic, radial bases function), 1NN with Manhattan distance, tree and logistic regression are utilized. To obtain individual results, the proposed post processing algorithm is applied to validation predictions. In order to show success of the proposed method, a vowel dataset is used. This dataset contains PD disease vowels and there are gender labels. By using the proposed octopus based method, PD, gender and both PD and gender recognitions are performed. The proposed method achieved 99.21%, 98.41% and 97.62% accuracy rates for gender, PD and gender and PD classification respectively using 1 nearest neighbor (1NN) classifier. The space complexity of the proposed method was calculated and was found as O(nlogn). These results clearly indicated that the proposed solves three problems with high success rates and low computational complexity. (C) 2019 Elsevier Ltd. All rights reserved.
机译:帕金森氏病(PD)是全球范围内最常见且最重要的神经系统疾病之一。随着技术的发展,已经提出了许多机器学习方法来自动识别PD。为了识别PD和性别,元音已被广泛使用,并且在文献中已经提出了许多解决这些问题的论文。在这项研究中,提出了一种新颖的基于章鱼的特征提取网络,提出的章鱼是一种多池化方法。在此方法中,使用最小,最大,最大-最小,平均值,方差,中位数,偏度和峰度合并方法。这八种混合方法由章鱼的腿组成。在本文中,使用提出的章鱼池方法提出了一种元音识别方法。所提出的方法包括预处理,特征提取,特征选择,分类和后处理阶段。在预处理中,将所提出的章鱼方法应用于信号以产生章鱼信号。利用奇异值分解(SVD)作为特征提取器,并使用原始元音信号和章鱼信号提取特征。为了进行特征选择,使用邻域分量分析(NCA)来删除冗余特征。在分类阶段,利用具有各种激活函数(线性,三次,径向基函数),具有曼哈顿距离的1NN,树和逻辑回归的支持向量机。为了获得单独的结果,将提出的后处理算法应用于验证预测。为了显示所提出方法的成功,使用了元音数据集。该数据集包含PD疾病元音,并且具有性别标签。通过使用提出的基于章鱼的方法,可以进行PD,性别以及PD和性别识别。所提出的方法使用1个最近邻(1NN)分类器分别实现了99.21%,98.41%和97.62%的性别,PD和性别和PD分类准确率。计算了所提出方法的空间复杂度,并发现为O(nlogn)。这些结果清楚地表明,该方案解决了成功率高,计算复杂度低的三个问题。 (C)2019 Elsevier Ltd.保留所有权利。

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