ML-based Video Streaming QoE Modeling with E2E and Link Metrics

Lei Wang, Adam Durning, D. Delaney
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Abstract

An increasing variety of network services and applications have led to a demand for service specific network management. QoE routing, routing service traffic on an individual basis, has been applied to target this demand. Learning tools have also been applied to automate and tailor management approach in real time within the network. A network manager can evaluate routing decisions to determine if expected performance was reached, and make adjustments to the routing model if not. The difficulty with this approach remains in collecting and evaluating the network state and service performance in real time to enable learning in the network. Such metrics must also be suitable for developing or adapting a routing model. This paper expands on a framework for real time feedback supported management. The aim of the paper is to identify and evaluate a suitable real time mechanism to collect network state data and a suitable application feedback metric. The metrics are evaluated for use in a routing model. The solution is unique as it provides a framework for a general service given a suitable feedback metric for that service. The paper examines application KPI metrics as suitable feedback metrics for two services, video streaming and VoIP, with APSNR and PESQ used as respective feedback metrics. The paper defines and evaluates link metrics as a mechanism for real time state determination. The framework is implemented and evaluated on an emulated SDN testbed.
基于ml的视频流QoE建模与端到端和链路度量
越来越多的网络服务和应用导致了对特定于服务的网络管理的需求。QoE路由(在单个基础上路由服务流量)已被应用于满足这一需求。学习工具也被应用于网络内实时的自动化和定制管理方法。网络管理员可以评估路由决策,以确定是否达到了预期的性能,如果没有,则对路由模型进行调整。该方法的难点在于如何实时收集和评估网络状态和服务性能,以实现网络中的学习。这样的度量还必须适合于开发或调整路由模型。本文扩展了一个支持实时反馈管理的框架。本文的目的是确定和评估一个合适的实时机制来收集网络状态数据和一个合适的应用反馈度量。在路由模型中对度量进行评估。该解决方案是独特的,因为它为一般服务提供了一个框架,并为该服务提供了合适的反馈度量。本文考察了应用KPI指标作为两种服务(视频流和VoIP)的合适反馈指标,并使用APSNR和PESQ作为各自的反馈指标。本文定义并评估了链路度量作为实时状态确定的机制。在SDN仿真试验台上对该框架进行了实现和评估。
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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