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An Effective Machine Learning (ML) Approach to Quality Assessment of Voice Over IP (VoIP) Calls

机译:有效的机器学习(ML)对IP语音质量评估的方法(VoIP)呼叫

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摘要

This letter puts forward a supervised ML technique to determine the Quality of Experience (QoE) of VoIP calls. It takes its beginning from an investigation on VQmon, an enhanced E-model version that estimates the quality of IP-based voice calls adopting an objective approach. The current study demonstrates VQmon shortcomings via a comparison between the Mean Opinion Score (MOS) values this technique predicts and the actual average ratings collected from a subjective listening quality campaign. It proposes to deploy Ordinal Logistic Regression (OLR) for speech quality assessment, and results disclose that OLR outperforms popular ML algorithms, in accuracy and confusion matrices.
机译:这封信提出了监督ML技术来确定VoIP呼叫的经验质量(QoE)。它从对VQMON的调查开始,这是一个增强的电子模型版本,估计采用客观方法的基于IP的语音呼叫的质量。目前的研究通过平均意见评分(MOS)值之间的比较来展示VQMON缺点本技术预测和从主观聆听质量运动中收集的实际平均评级。它建议部署用于语音质量评估的序数逻辑回归(OLR),结果揭示了OLR,以精度和混淆矩阵达到了流行的ML算法。

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