MIMIC: Using passive network measurements to estimate HTTP-based adaptive video QoE metrics

Tarun Mangla, Emir Halepovic, M. Ammar, E. Zegura
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引用次数: 20

Abstract

HTTP-based Adaptive Streaming (HAS) has seen a major growth in the cellular networks. As a key application and network demand driver, user-perceived Quality of Experience (QoE) of video streaming contributes to the overall user satisfaction. Therefore, it becomes critical for the cellular network operators to understand the QoE of video streams. It can help with long-term network planning and provisioning and QoE-aware traffic management. However, tracking QoE is challenging as network operators do not have direct access to the video streaming apps, user devices or servers. In this paper, we provide a methodology that uses passive network measurements of unencrypted HAS video streams to estimate three key video QoE metrics — average bitrate, re-buffering ratio and bitrate switches. Our approach relies on the semantics of HAS to model a video session on the client. We first develop and validate our methodology through controlled experiments in the lab. Then, we conduct a large-scale validation of our approach using network data from a major cellular operator and ground truth QoE metrics from a large video service. We accurately predict the value of average bitrate within a relative error of 10% for 70%–90% of video sessions and re-buffering ratio within 1 percentage point for 65–90% of sessions. We further quantify the network overhead due to video chunk replacement and observe that a significant number of sessions have a high overhead of 20% or more. Finally, we highlight several challenges with video QoE metrics estimation in a large-scale monitoring system.
MIMIC:使用被动网络测量来估计基于http的自适应视频QoE指标
基于http的自适应流(HAS)在蜂窝网络中得到了很大的发展。视频流的用户感知体验质量(QoE)作为一个关键的应用和网络需求驱动因素,影响着用户的整体满意度。因此,了解视频流的QoE对蜂窝网络运营商来说至关重要。它可以帮助进行长期的网络规划和供应,以及支持qos的流量管理。然而,跟踪QoE具有挑战性,因为网络运营商无法直接访问视频流应用程序、用户设备或服务器。在本文中,我们提供了一种方法,该方法使用无源网络测量未加密的HAS视频流来估计三个关键的视频QoE指标-平均比特率,重新缓冲比率和比特率开关。我们的方法依赖于HAS的语义来为客户端上的视频会话建模。我们首先通过实验室的对照实验开发和验证我们的方法。然后,我们使用来自主要蜂窝运营商的网络数据和来自大型视频服务的真实QoE指标对我们的方法进行了大规模验证。对于70%-90%的视频会话,我们准确地预测了平均比特率的值,相对误差在10%以内,对于65-90%的会话,我们预测的重新缓冲比率在1个百分点以内。我们进一步量化了由于视频块替换而导致的网络开销,并观察到大量会话的开销高达20%或更多。最后,我们强调了在大规模监控系统中视频QoE度量估计的几个挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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