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FusedTSNet: An automated nocturnal sleep sound classification method based on a fused textural and statistical feature generation network

机译:FUSETSNET:基于融合纹理和统计特征生成网络的自动夜间睡眠声音分类方法

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摘要

Nowadays, many people have suffered from sleep disorders. These diseases affect daily life and can disrupt sanity. Sleep disorders/diseases can be diagnosed by using nocturnal sleep sounds. This work presents an automated nocturnal sound classification method. The proposed nocturnal sound classification method can be used in the automated sleep disease diagnosis process. To propose a highly accurate and cognitive method, a fused feature generation network is proposed. The proposed fused feature generation network extracts both textural features and statistical features together. Therefore, this method is called as fused textural and statistical feature generation network (FusedTSNet). One-dimensional discrete wavelet transform (DWT) is employed to create levels and 7-leveled DWT is applied to nocturnal sounds. Here, DWT is utilized as a pooling/decomposition method to create a multileveled feature generation network. By using the ReliefF iterative neighborhood component analysis (RFINCA), the most valuable features are selected. To demonstrate the success of the FusedTSNet and RFINCA based nocturnal sound classification method, conventional classifiers are used. The proposed FusedTSNet and RFINCA based nocturnal sound classification method were tested on a collected nocturnal sound dataset. This dataset has 700 sounds in 7 classes. Our method achieved a 98.0% classification rate on this dataset. This work clearly indicates that the automated sleep behavior detection can be developed and the success of the proposed FusedTSNet and RFINCA based sound classification method is obviously shown. (C) 2020 Elsevier Ltd. All rights reserved.
机译:如今,许多人患有睡眠障碍。这些疾病影响日常生活,可以扰乱理智。可以通过使用夜间睡眠声音诊断睡眠障碍/疾病。这项工作提出了一种自动夜间声音分类方法。所提出的夜间声音分类方法可用于自动睡眠疾病诊断过程中。为了提出一种高度准确和认知的方法,提出了一种融合特征生成网络。所提出的融合特征生成网络在一起提取纹理特征和统计特征。因此,该方法称为融合纹理和统计特征生成网络(FUSTTSNET)。一维离散小波变换(DWT)用于创建水平,7级DWT应用于夜间声音。这里,DWT用作池/分解方法以创建多级特征生成网络。通过使用Creieff迭代邻域分量分析(RFINCA),选择最有价值的功能。为了展示融合的融合和基于rfinca的夜间声音分类方法的成功,使用传统的分类器。在收集的夜间声音数据集上测试了所提出的融合和基于RFINCA的夜间声音分类方法。此数据集具有7个类的700个声音。我们的方法在此数据集中实现了98.0%的分类率。这项工作清楚地表明,显然可以开发自动睡眠行为检测,并且显着显示了所提出的融合和基于RFINCA的声音分类方法的成功。 (c)2020 elestvier有限公司保留所有权利。

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