Dashlet:驯服滑动不确定性的稳健短视频流

Zhuqi Li, Yaxiong Xie, R. Netravali, K. Jamieson
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引用次数: 3

摘要

短视频流应用程序最近获得了巨大的吸引力,但它们为滑动用户提供的非线性视频呈现从根本上改变了在面对变幻无常的网络吞吐量和用户滑动时间时最大化用户体验质量的问题。本文描述了Dashlet的设计和实现,这是一个专为短视频流应用提供高质量体验的系统。根据我们从TikTok的现场性能研究和一项专注于滑动模式的用户研究中收集到的见解,Dashlet提出了一种新的无序视频块预缓冲机制,该机制利用一个简单的、非机器学习的用户滑动统计模型来确定预缓冲顺序和比特率。最终的结果是,这个系统达到了oracle系统77-99%的QoE,比TikTok高出43.9-45.1倍,同时还减少了30%的下载视频浪费,这些视频从未被观看过。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dashlet: Taming Swipe Uncertainty for Robust Short Video Streaming
Short video streaming applications have recently gained substantial traction, but the non-linear video presentation they afford swiping users fundamentally changes the problem of maximizing user quality of experience in the face of the vagaries of network throughput and user swipe timing. This paper describes the design and implementation of Dashlet, a system tailored for high quality of experience in short video streaming applications. With the insights we glean from an in-the-wild TikTok performance study and a user study focused on swipe patterns, Dashlet proposes a novel out-of-order video chunk pre-buffering mechanism that leverages a simple, non machine learning-based model of users' swipe statistics to determine the pre-buffering order and bitrate. The net result is a system that achieves 77-99% of an oracle system's QoE and outperforms TikTok by 43.9-45.1x, while also reducing by 30% the number of bytes wasted on downloaded video that is never watched.
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