A No-Reference Video Streaming QoE Estimator based on Physical Layer 4G Radio Measurements

D. Moura, M. Sousa, P. Vieira, A. Rodrigues, Tiago Rosa Maria Paula Queluz
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引用次数: 4

Abstract

With the increase in consumption of multimedia content through mobile devices (e.g., smartphones), it is crucial to find new ways of optimizing current and future wireless networks and to continuously give users a better Quality of Experience (QoE) when accessing that content. To achieve this goal, it is necessary to provide Mobile Network Operator (MNO) with real time QoE monitoring for multimedia services (e.g., video streaming, web browsing), enabling a fast network optimization and an effective resource management. This paper proposes a new QoE prediction model for video streaming services over 4G networks, using layer 1 (i.e., Physical Layer) key performance indicators (KPIs). The model estimates the service Mean Opinion Score (MOS) based on a Machine Learning (ML) algorithm, and using real MNO drive test (DT) data, where both application layer and layer 1 metrics are available. From the several considered ML algorithms, the Gradient Tree Boosting (GTB) showed the best performance, achieving a Pearson correlation of 78.9%, a Spearman correlation of 66.8% and a Mean Squared Error (MSE) of 0.114, on a test set with 901 examples. Finally, the proposed model was tested with new DT data together with the network’s configuration. With the use case results, QoE predictions were analyzed according to the context in which the session was established, the radio transmission environment and radio channel quality indicators.
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基于物理层4G无线电测量的无参考视频流QoE估计
随着通过移动设备(例如智能手机)消费多媒体内容的增加,找到优化当前和未来无线网络的新方法,并在访问内容时不断为用户提供更好的体验质量(QoE),这一点至关重要。为了实现这一目标,有必要为移动网络运营商(MNO)提供对多媒体业务(如视频流、网页浏览)的实时QoE监控,从而实现快速的网络优化和有效的资源管理。本文提出了一种基于第1层(即物理层)关键性能指标(kpi)的4G网络视频流业务QoE预测模型。该模型基于机器学习(ML)算法,并使用实际的MNO驱动测试(DT)数据来估计服务的平均意见得分(MOS),其中应用层和第一层指标都是可用的。在几种考虑的ML算法中,梯度树增强(GTB)表现出最好的性能,在901个示例的测试集上实现了78.9%的Pearson相关性,66.8%的Spearman相关性和0.114的均方误差(MSE)。最后,利用新的DT数据和网络配置对所提模型进行了验证。使用用例结果,根据会话建立的上下文、无线电传输环境和无线电信道质量指标分析QoE预测。
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