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NIML: non-intrusive machine learning-based speech quality prediction on VoIP networks

机译:NIML:基于非侵入式机器学习的VoIP网络语音质量预测

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Voice over Internet Protocol (VoIP) networks have recently emerged as a promising telecommunication medium for transmitting voice signal. One of the essential aspects that interests researchers is how to estimate the quality of transmitted voice over VoIP for several purposes such as design and technical issues. Two methodologies are used to evaluate the voice, which are subjective and objective methods. In this study, the authors propose a non-intrusive machine learning-based (NIML) objective method to estimate the quality of voice. In particular, they build a training set of parameters - from the network and the voice itself - along with the quality of voices as labels. The voice quality is estimated using the perceptual evaluation of speech quality (PESQ) method as an intrusive algorithm. Then, the authors use a set of classifiers to build models for estimating the quality of the transmitted voice from the training set. The experimental results show that the classifier models have a valuable performance where Random Forest model has superior results compared to other models of precision 94.1%, recall 94.2%, and receiver operating characteristic area 99.2% as evaluation metrics.
机译:互联网协议语音(VoIP)网络最近已成为一种有希望的用于传输语音信号的电信介质。研究人员感兴趣的基本方面之一是如何针对诸如设计和技术问题之类的多个目的评估VoIP上传输的语音的质量。主观和客观两种方法可用于评估声音。在这项研究中,作者提出了一种基于非侵入式机器学习(NIML)的客观方法来估计语音质量。特别是,他们从网络和语音本身建立了一组训练参数,以及语音质量作为标签。使用语音质量的感知评估(PESQ)方法作为侵入性算法来估计语音质量。然后,作者使用一组分类器来构建模型,以从训练集中估计传输语音的质量。实验结果表明,与其他精度为94.1%,召回率为94.2%,接收器工作特征区域为99.2%的模型相比,随机森林模型具有更好的结果,其中随机森林模型具有更好的性能。

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