User equipment is one of the main bottlenecks facing the gaming industry nowadays. The extremely realistic games which are currently available trigger high computational requirements of the user devices to run games. As a consequence, the game industry has proposed the concept of Cloud Gaming, a paradigm that improves gaming experience in reduced hardware devices. To this end, games are hosted on remote servers, relegating users' devices to play only the role of a peripheral for interacting with the game. However, this paradigm overloads the communication links connecting the users with the cloud. Therefore, service experience becomes highly dependent on network connectivity. To overcome this, Cloud Gaming will be boosted by the promised performance of 5G and future 6G networks, together with the flexibility provided by mobility in multi-RAT scenarios, such as WiFi. In this scope, the present work proposes a framework for measuring and estimating the main E2E metrics of the Cloud Gaming service, namely KQIs. In addition, different machine learning techniques are assessed for predicting KQIs related to Cloud Gaming user's experience. To this end, the main key quality indicators (KQIs) of the service such as input lag, freeze percent or perceived video frame rate are collected in a real environment. Based on these, results show that machine learning techniques provide a good estimation of these indicators solely from network-based metrics. This is considered a valuable asset to guide the delivery of Cloud Gaming services through cellular communications networks even without access to the user's device, as it is expected for telecom operators.
翻译:用户设备是当今赌博行业面临的主要瓶颈之一。 目前极现实的游戏引发了用户运行游戏设备的高计算要求。 因此, 游戏行业提出了云游戏的概念, 这是改进降低硬件设备赌博经验的范例。 为此, 将游戏置于远程服务器上, 将用户设备降格为仅发挥与游戏互动外围功能的作用 。 但是, 这个模式使用户与云连接的通信链接负担过重。 因此, 服务经验高度依赖于网络连接。 要克服这一点, 云游戏将因5G和未来的6G网络的允诺性能以及多RAT情景中移动性提供的灵活性( 如WiFi)而得到提升。 在此范围内, 本次工作提出了一个框架,用于测量和估计云游戏服务的主要 E2E 标准, 即 KQIs。 此外, 将不同的机器学习技术用于预测与云游戏用户经验相关的 KQIs 。 为此, 5Gload Geam网络的主要质量指标( KQIs) 和未来的6G 网络, 以及Wi-L Fi- Leal fielding the s real view viewing s real viewal viewal viewal viewal view views the the sermal viewlational viewm resmal labilds labs lapal ress views lapal views