面向QoE优化dash应用的内容感知自适应方案

Shenghong Hu, Lingfen Sun, Chao Gui, E. Jammeh, I. Mkwawa
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引用次数: 28

摘要

本文提出了一种新的内容感知自适应方案,用于qos优化的基于http的自适应视频流服务。近年来,内容类型对用户可接受体验质量(QoE)产生了深刻的影响。然而,现有的基于http的自适应视频策略大多只是根据网络资源进行比特率切换,而没有考虑视频内容类型。这可能会导致非最佳网络资源分配,从而可能无法实现交付视频流服务的最佳QoE。本文提出了两种内容感知自适应方案,即内容感知探测与自适应(C-PANDA)和内容感知动态规划(C-DP),这两种方案能够根据可用带宽、现有缓冲容量以及视频内容类型来确定下一视频片段的视频比特率。我们基于libdash 3.0库在玩家原型中实现了这两种内容感知适应算法。初步结果表明,与传统的PANDA方案相比,内容感知自适应方案获得了更好的QoE。所提出的方案能够根据内容对QoE进行优化。他们可以为最吸引人的内容(例如那些具有高运动强度的内容)实现高于可接受的QoE,以改善最有趣场景的用户体验;为属于一个场景的片段选择相同的视频表示,以避免质量振荡;并在低动作场景中预留缓冲资源,以避免后续高动作场景的停顿。本文的研究成果对未来设计基于qoe的DASH方案具有一定的参考价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Content-aware adaptation scheme for QoE optimized dash applications
The paper presents novel content-aware adaptation schemes for QoE optimized HTTP-based adaptive video streaming services. In recent years, content type has been investigated and proofed to have a deep influence on user's acceptable quality of experience (QoE). However, most of the existing HTTP-based adaptive video strategies only conduct bitrate switching according to network resources without a consideration of video content types. This may cause a non-optimal network resource allocation which may not achieve the optimized QoE for delivered video streaming services. In this paper, we proposed two content-aware adaptation schemes, named as Content-aware Probe and Adapt (C-PANDA) and Content-aware Dynamic Programming (C-DP), which are able to decide the video bitrate for the next video segment, based on not only the available bandwidth, the existing buffer capacity, but also the video content type. We implemented both content-aware adaptation algorithms in player prototypes based on libdash 3.0 library. Preliminary results show that content-aware adaptation schemes achieve better QoE when compared with conventional PANDA scheme. The proposed schemes are able to optimize QoE according to contents. They can achieve higher than acceptable QoE for most attractive contents such as those with high motion intensity to improve user experience for the most interesting scenes; select same video representations for segments belonging to a scene to avoid quality oscillation; and reserve buffer resource during low motion scenes to avoid stalling for the following high motion scenes. The work will be helpful in designing QoE-aware DASH schemes in the future.
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