基于深度强化学习的HTTP自适应流动态推送

Haipeng Du, Danfu Yuan, Weizhan Zhang, Q. Zheng
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引用次数: 0

摘要

HTTP自适应流(HAS)由于其卓越的体验质量(QoE)的显著优势,已经彻底改变了互联网上的视频分发。由于HTTP/1.1基于拉的特性,客户端必须为每个段发出请求。这通常会导致高请求开销和低带宽利用率,最终降低QoE。目前,对HAS自适应比特率算法的研究主要集中在新HTTP标准中引入的服务器推送功能上,该功能使客户端能够通过单个请求接收多个段。每次发送请求时,客户端必须同时决定服务器应该推送的段的数量和这些未来段的比特率。随着决策空间复杂性的增加,现有的基于规则的策略不可避免地无法达到最优性能。在本文中,我们提出了D-Push,一个结合了深度强化学习(DRL)技术的HAS框架。D-Push不依赖于对环境和网络容量变化模型的不准确假设,而是训练一个DRL模型,并通过训练过程利用过去决策的QoE来做出决策,并适应大范围的高动态环境。实验结果表明,D-Push在平均QoE方面比现有最先进的算法高出12%-24%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Push for HTTP Adaptive Streaming with Deep Reinforcement Learning
HTTP adaptive streaming (HAS) has revolutionized video distribution over the Internet due to its prominent benefit of outstanding quality of experience (QoE). Due to the pull-based nature of HTTP/1.1, the client must make requests for each segment. This usually causes high request overhead and low bandwidth utilization and finally reduces QoE. Currently, research into the HAS adaptive bitrate algorithm typically focuses on the server-push feature introduced in the new HTTP standard, which enables the client to receive multiple segments with a single request. Every time a request is sent, the client must simultaneously make decisions on the number of segments the server should push and the bitrate of these future segments. As the decision space complexity increases, existing rule-based strategies inevitably fail to achieve optimal performance. In this paper, we present D-Push, an HAS framework that combines deep reinforcement learning (DRL) techniques. Instead of relying on inaccurate assumptions about the environment and network capacity variation models, D-Push trains a DRL model and makes decisions by exploiting the QoE of past decisions through the training process and adapts to a wide range of highly dynamic environments. The experimental results show that D-Push outperforms the existing state-of-the-art algorithm by 12%-24% in terms of the average QoE.
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