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引用次数: 0
摘要
过去两年,移动视频流量占所有移动数据流量的一半以上。由于带宽有限,用户对高质量视频流的需求成为一个挑战,利用新兴的接入网多样性和自适应视频流可以解决这一问题。本文针对国际著名的视频流标准DASH (Dynamic Adaptive Streaming over HTTP),提出了一种网络选择算法,以提高接收到的具有多个接口的“多用户”视频质量。提出了一种多臂班迪(MAB)启发式算法,用于在每一步动态选择最佳接口。虽然DASH中使用的自适应比特率规则(ABR)允许视频播放器客户端根据感知到的网络条件动态选择比特率水平,但在每个切换步骤中,由于可用接口的网络条件不同,可能会出现质量下降。本文旨在通过(i)为多户用户设计基于DASH的MAB算法,(ii)通过测试平台实现评估所提议的机制,(iii)扩展经典MAB模型以及(iv)讨论一些开放问题来缩小这一差距。
Enhancing dynamic adaptive streaming over HTTP for multi-homed users using a Multi-Armed Bandit algorithm
Mobile video traffic accounted for more than half of all mobile data traffic over the past two years. Due to the limited bandwidth, users demand for high-quality video streaming becomes a challenge, which could be addressed by exploiting the emerging diversity of access network and adaptive video streaming. In this paper, a network selection algorithm is proposed for Dynamic Adaptive Streaming over HTTP (DASH), the famous international standard on video streaming, to enhance the received video quality to a "multi-homed user" equipped with multiple interfaces. A Multi-Armed Bandit (MAB) heuristic is proposed for a dynamic selection of the best interface at each step. While the Adaptive Bitrate Rules (ABR) used in DASH allow the video player client to dynamically pick the bit rate level according to the perceived network conditions, at each switching step a quality degradation may occur due to the difference in network conditions of the available interfaces. This paper aims to close this gap by (i) designing a MAB algorithm over DASH for a multi-homed user, (ii) evaluating the proposed mechanism through a test-bed implementation, (iii) extending the classic MAB model and (iv) discussing some open issues.