360HRL: Hierarchical Reinforcement Learning Based Rate Adaptation for 360-Degree Video Streaming

Jun Fu, Chen Hou, Zhibo Chen
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引用次数: 5

Abstract

Recently, reinforced adaptive bitrate (ABR) algorithms have achieved remarkable success in tile-based 360-degree video streaming. However, they heavily rely on accurate viewport prediction. To alleviate this issue, we propose a hierarchical reinforcement-learning (RL) based ABR algorithm, dubbed 360HRL. Specifically, 360HRL consists of a top agent and a bottom agent. The former is used to decide whether to download a new segment for continuous playback or re-download an old segment for correcting wrong bitrate decisions caused by inaccurate viewport estimation, and the latter is used to select bitrates for tiles in the chosen segment. In addition, 360HRL adopts a two-stage training methodology. In the first stage, the bottom agent is trained under the environment where the top agent always chooses to download a new segment. In the second stage, the bottom agent is fixed and the top agent is optimized with the help of a heuristic decision rule. Experimental results demonstrate that 360HRL outperforms existing RL-based ABR algorithms across a broad of network conditions and quality of experience (QoE) objectives.
360HRL:基于分层强化学习的360度视频流速率自适应
近年来,增强自适应比特率(ABR)算法在基于tile的360度视频流中取得了显著的成功。然而,它们严重依赖于准确的视口预测。为了缓解这个问题,我们提出了一种基于分层强化学习(RL)的ABR算法,称为360HRL。具体来说,360HRL由一个顶部代理和一个底部代理组成。前者用于决定是否下载一个新的片段进行连续播放,或者重新下载一个旧的片段以纠正由于不准确的视口估计而导致的错误的比特率决定,后者用于选择所选片段中瓦片的比特率。此外,360HRL采用两阶段训练方法。在第一阶段,底部智能体在顶部智能体总是选择下载新段的环境下进行训练。第二阶段,利用启发式决策规则对底层智能体进行固定,对顶层智能体进行优化。实验结果表明,在广泛的网络条件和体验质量(QoE)目标上,360HRL优于现有的基于rl的ABR算法。
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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