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An automated snoring sound classification method based on local dual octal pattern and iterative hybrid feature selector

机译:一种基于局部双八大模式和迭代混合特征选择器的自动打鼾声音分类方法

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摘要

In this research, a novel snoring sound classification (SSC) method is presented by proposing a new feature generation function to yield a high classification rate. The proposed feature extractor is named as Local Dual Octal Pattern (LDOP). A novel LDOP based SSC method is presented to solve the low success rate problems for Munich-Passau Snore Sound Corpus (MPSSC) dataset. Multilevel discrete wavelet transform (DWT) decomposition and the LDOP based feature generation, informative features selection with ReliefF and iterative neighborhood component analysis (RFINCA), and classification using k nearest neighbors (kNN) are fundamental phases of the proposed SSC method. Seven leveled DWT transform, and LDOP are used together to generate low, medium, and high levels features. This feature generation network extracts 4096 features in total. RFINCA selects 95 the most discriminative and informative ones of these 4096 features. In the classification phase, kNN with leave one out cross-validation (LOOCV) is used. 95.53% classification accuracy and 94.65% unweighted average recall (UAR) have been achieved using this method. The proposed LDOP based SSC method reaches 22% better result than the best of the other state-of-the-art machine learning and deep learning-based methods. These results clearly denote the success of the proposed SSC method.
机译:在该研究中,通过提出新的特征生成函数来提出一种新的打鼾声音分类(SSC)方法以产生高分类率。所提出的特征提取器被命名为局部双八大模式(LDOP)。提出了一种基于新型的基于LDOP的SSC方法,以解决慕尼黑帕劳的较低的成功率问题,用于慕尼黑 - PASSAU打鼾声音语料库(MPSSC)数据集。多级离散小波变换(DWT)分解和基于LDOP的特征生成,与Relieff和迭代邻域分量分析(RFINCA)的信息选择,以及使用K最近邻居(KNN)的分类是所提出的SSC方法的基本阶段。七个级别的DWT变换,LDOP一起使用,以产生低,介质和高水平的功能。此功能生成网络总共提取4096个功能。 Rfinca选择了95项最辨别的和信息性的4096个功能。在分类阶段,使用具有留出一个交叉验证(LOOCV)的KNN。使用此方法实现了95.53%的分类准确度和94.65%的未加权平均召回(UAR)。基于LDOP的SSC方法达到了22%,结果比其他最先进的机器学习和基于深度学习的方法的最佳结果达到22%。这些结果清楚地表示所提出的SSC方法的成功。

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