FoV-Aware Edge Caching for Adaptive 360° Video Streaming

A. Mahzari, A. T. Nasrabadi, Aliehsan Samiei, R. Prakash
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引用次数: 78

Abstract

In recent years, there has been growing popularity of Virtual Reality (VR), enabled by technologies like 360° video streaming. Streaming 360° video is extremely challenging due to high bandwidth and low latency requirements. Some VR solutions employ adaptive 360° video streaming which tries to reduce bandwidth consumption by only streaming high resolution video for user's Field of View (FoV). FoV is the part of the video which is being viewed by the user at any given time. Although FoV-adaptive 360° video streaming has been helpful in reducing bandwidth requirements, streaming 360° video from distant content servers is still challenging due to network latency. Caching popular content close to the end users not only decreases network latency, but also alleviates network bandwidth demands by reducing the number of future requests that have to be sent all the way to remote content servers. In this paper, we propose a novel caching policy based on users' FoV, called FoV-aware caching policy. In FoV-aware caching policy, we learn a probabilistic model of common-FoV for each 360° video based on previous users' viewing histories to improve caching performance. Through experiments with real users' head movement dataset, we show that our proposed approach improves cache hit ratio compared to Least Frequently Used (LFU) and Least Recently Used (LRU) caching policies by at least 40% and 17%, respectively.
自适应360°视频流的视场感知边缘缓存
近年来,通过360°视频流等技术,虚拟现实(VR)越来越受欢迎。由于高带宽和低延迟要求,流媒体360°视频极具挑战性。一些VR解决方案采用自适应360°视频流,试图通过仅为用户的视场(FoV)传输高分辨率视频来减少带宽消耗。视场是用户在任何给定时间观看的视频部分。尽管fov自适应360°视频流有助于降低带宽需求,但由于网络延迟,从远程内容服务器传输360°视频流仍然具有挑战性。将流行的内容缓存在靠近最终用户的地方,不仅可以减少网络延迟,还可以通过减少必须一路发送到远程内容服务器的未来请求的数量来缓解网络带宽需求。本文提出了一种基于用户视场的缓存策略,称为视场感知缓存策略。在视场感知缓存策略中,我们基于以前用户的观看历史,学习了每个360°视频的公共视场概率模型,以提高缓存性能。通过真实用户头部运动数据集的实验,我们表明,与Least frequency use (LFU)和Least Recently Used (LRU)缓存策略相比,我们提出的方法将缓存命中率分别提高了至少40%和17%。
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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