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QoE Aware Transcoding for Live Streaming in SDN-Based Cloud-Aided HetNets: An Actor-Critic Approach

机译:在基于SDN的云辅助HetNet中用于实时流的QoE感知转码:一种行为者批判方法

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With the advances in hand-held devices (smart-phones and tablets, etc.) and high speed wireless networks, users have an explosive growth demand for live streaming service. Due to the diversity of user equipments (UEs), the live streaming has to be transcoded as different versions. However, transcoding is a computationally expensive and time consuming process. Since the shortage of computational resources and unstable of wireless networks, providing strict delay requirement and high quality live videos for wireless UEs is a big challenge. In this paper, we investigate user scheduling, transcoding decision, computational and wireless spectrum resources allocation problem in software-defined networking (SDN) based cloud-aided of heterogeneous networks (HetNets). Our research focuses on improving UEs' quality of experience (QoE) while guaranteeing time-delay requirement for live streaming services. Different from existing literature, to approach the real wireless environment, the available computational and wireless spectrum resources are modeled as random processes in our research. Considering dynamic characteristics of wireless networks and the available resources, the above problem is modeled as a Markov decision problem (MDP). Since the action space of the MDP is multi-dimensional continuous variables mixed with discrete variables, traditional learning algorithms are powerless. Therefore, an online actor critic algorithm is proposed to resolve the problem. Simulation results show the proposed algorithm has superior performances compared with the policy gradient algorithm and deep Q-learning network (DQN).
机译:随着手持设备(智能手机和平板电脑等)和高速无线网络的发展,用户对实时流服务的爆炸性增长需求。由于用户设备(UE)的多样性,实时流必须转码为不同的版本。然而,代码转换是计算上昂贵且耗时的过程。由于计算资源的短缺和无线网络的不稳定,为无线UE提供严格的延迟要求和高质量的实时视频是一个巨大的挑战。在本文中,我们研究了基于软件定义网络(SDN)的异构网络(HetNets)云辅助下的用户调度,代码转换决策,计算和无线频谱资源分配问题。我们的研究侧重于提高UE的体验质量(QoE),同时保证实时流服务的时延要求。与现有文献不同,为了接近真实的无线环境,在我们的研究中将可用的计算和无线频谱资源建模为随机过程。考虑到无线网络的动态特性和可用资源,以上问题被建模为马尔可夫决策问题(MDP)。由于MDP的动作空间是混合了离散变量的多维连续变量,因此传统的学习算法无能为力。因此,提出了一种在线演员评论算法来解决该问题。仿真结果表明,与策略梯度算法和深度Q学习网络(DQN)相比,该算法具有更好的性能。

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