Applications that allow sharing of user-created short videos exploded in popularity in recent years. A typical short video application allows a user to swipe away the current video being watched and start watching the next video in a video queue. Such user interface causes significant bandwidth waste if users frequently swipe a video away before finishing watching. Solutions to reduce bandwidth waste without impairing the Quality of Experience (QoE) are needed. Solving the problem requires adaptively prefetching of short video chunks, which is challenging as the download strategy needs to match unknown user viewing behavior and network conditions. In our work, we first formulate the problem of adaptive multi-video prefetching in short video streaming. Then, to facilitate the integration and comparison of researchers' algorithms towards solving the problem, we design and implement a discrete-event simulator, which we release as open source. Finally, based on the organization of the Short Video Streaming Grand Challenge at ACM Multimedia 2022, we analyze and summarize the algorithms of the contestants, with the hope of promoting the research community towards addressing this problem.
翻译:允许分享用户创建的短视频的应用程序近年来在流行中爆炸。 典型的短视频应用程序允许用户删除当前被观看的视频,并开始在视频队列中观看下一个视频。 如果用户经常在完成观看之前浏览视频,用户界面就会造成重大的带宽浪费。 需要解决方案来减少带宽浪费,同时不影响经验的质量(QE)。 解决这个问题需要适应性地预先铺开短视频块,因为下载战略需要匹配未知的用户观看行为和网络条件,这是具有挑战性的。 在我们的工作中,我们首先在短视频流中制定适应性多视频预展的问题。 然后,为了便利研究人员算法的整合和比较,以便解决问题,我们设计和实施一个独立活动模拟器,作为公开来源发布。 最后,我们根据在ACM多媒体2022上组织的短视频流大挑战,分析和总结了参赛者的算法,希望推动研究界解决这一问题。