Super-resolution on Edge Computing for Improved Adaptive HTTP Live Streaming Delivery

J. M. L. Filho, Maiara de Souza Coelho, C. Melo
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Abstract

According to a Cisco report, mobile network speeds will more than triple by 2023, from 13.2 Mbps in 2018 to 43.9 Mbps in 2023. The average 5G connection speed is forecasted to reach 575 Mbps by 2023. This increase in bandwidth on mobile networks, along with the growing demand for streaming video content, has imposed unprecedented challenges on the backhaul networks that interconnect mobile networks to the Internet core. A trend to mitigate this problem has been to bring the source of content closer to the users, bringing it from the cloud to multi-access edge computing (MEC), therefore shifting the traffic pattern from the Internet core to the edge. In this article, we propose a framework called live streaming with super-resolution (LiveSR) that uses deep neural network-based super-resolution. In the LiveSR, live video moves in low resolution down to MEC and upscales to high resolution before being delivered to viewers over high-bandwidth mobile networks. We evaluate the proposed framework in scenarios with real 5G network traces. When we compare the proposed framework and a cloud-based video delivery system in a network defined by congested backhaul links, results show that the LiveSR framework can increase the quality of experience (QoE) in adaptive live videos by 49%, 51%, and 58% for the LoL+, BOLA, and L2A-LL adaptive algorithms, respectively. A considerable reduction in traffic in the backhaul is also recorded, ranging from 97.36% to 98.18%.
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基于边缘计算的超分辨率改进自适应HTTP实时流传输
根据思科的一份报告,到2023年,移动网络速度将增加两倍以上,从2018年的13.2 Mbps增加到2023年的43.9 Mbps。预计到2023年,平均5G连接速度将达到575 Mbps。移动网络带宽的增加,以及对流媒体视频内容日益增长的需求,对连接移动网络和互联网核心的回程网络提出了前所未有的挑战。缓解这一问题的一个趋势是使内容来源更接近用户,将其从云带到多访问边缘计算(MEC),从而将流量模式从互联网核心转移到边缘。在本文中,我们提出了一个称为超分辨率直播(LiveSR)的框架,该框架使用基于深度神经网络的超分辨率。在LiveSR中,直播视频在通过高带宽移动网络传送给观众之前,先从低分辨率移动到MEC,然后再升级到高分辨率。我们在具有真实5G网络痕迹的场景中评估了所提出的框架。当我们将所提出的框架与由拥塞回程链路定义的网络中基于云的视频传输系统进行比较时,结果表明,与LoL+、BOLA和L2A-LL自适应算法相比,LiveSR框架可将自适应直播视频的体验质量(QoE)分别提高49%、51%和58%。回程的流量也大幅减少,从97.36%到98.18%不等。
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