Quality of Experience Prediction for VoIP Calls Using Audio MFCCs and Multilayer Perceptron

Faruk Kaledibi, H. Kilinç, C. O. Sakar
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Abstract

To provide a high-quality communication service to their users, VoIP service providers use some monitoring and warning systems that notify them of any malfunctions that may occur in the system. Because the VoIP service is delivered over the internet, issues with the internet infrastructure and related hardware have a direct impact on the quality of service (QoS) and experience provided. In such cases, service providers analyze the QoS reports to analyze the incidents. The QoS reports consist of various parameters such as packet loss, delay, jitter, and codec information extracted from the related VoIP call. However, in some cases, these parameters may be insufficient or corrupted. Therefore, real sound recordings are used to determine the source of the complaint. However, listening to audio recordings made by third parties is not preferred when the content is sensitive. Thus, a computer-based analysis is an important requirement in such cases. In this study, a machine learning-based model was developed that can classify a given packet loss into six classes, which is one of the most important factors affecting the quality of experience. The audio recordings were represented with Mel Frequency Cepstrum Coefficients (MFCCs). The model trained using 9000 5-second audio recordings from 15 different speakers can predict the packet loss rate and the mean opinion score (MOS) with an accuracy of 87%.
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基于音频mfc和多层感知机的VoIP呼叫体验质量预测
为了向用户提供高质量的通信服务,VoIP服务提供商使用一些监控和警告系统来通知他们系统中可能发生的任何故障。由于VoIP服务是通过互联网提供的,因此互联网基础设施和相关硬件的问题直接影响到所提供的服务质量(QoS)和体验。在这种情况下,服务提供者通过分析QoS报告来分析事件。QoS报表包括各种参数,如丢包、延迟、抖动和从相关VoIP呼叫中提取的编解码信息。然而,在某些情况下,这些参数可能不足或损坏。因此,使用真实录音来确定投诉的来源。但是,在内容敏感的情况下,不建议收听第三方录制的音频。因此,在这种情况下,基于计算机的分析是一个重要的要求。在本研究中,开发了一个基于机器学习的模型,可以将给定的丢包分为六类,这是影响体验质量的最重要因素之一。录音用Mel频率倒谱系数(MFCCs)表示。该模型使用来自15个不同说话者的9000段5秒录音进行训练,可以预测丢包率和平均意见评分(MOS),准确率为87%。
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