Llama - Low Latency Adaptive Media Algorithm

Tomasz Lyko, M. Broadbent, N. Race, M. Nilsson, Paul Farrow, S. Appleby
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引用次数: 3

Abstract

In the recent years, HTTP Adaptive Bit Rate (ABR) streaming including Dynamic Adaptive Streaming over HTTP (DASH) has become the most popular technology for video streaming over the Internet. The client device requests segments of content using HTTP, with an ABR algorithm selecting the quality at which to request each segment to trade-off video quality with the avoidance of stalling. This introduces high latency compared to traditional broadcast methods, mostly in the client buffer which needs to hold enough data to absorb any changes in network conditions. Clients employ an ABR algorithm which monitors network conditions and adjusts the quality at which segments are requested to maximise the user's Quality of Experience. The size of the client buffer depends on the ABR algorithm's capability to respond to changes in network conditions in a timely manner, hence, low latency live streaming requires an ABR algorithm that can perform well with a small client buffer. In this paper, we present Llama - a new ABR algorithm specifically designed to operate in such scenarios. Our new ABR algorithm employs the novel idea of using two independent throughput measurements made over different timescales. We have evaluated Llama by comparing it against four popular ABR algorithms in terms of multiple QoE metrics, across multiple client settings, and in various network scenarios based on CDN logs of a commercial live TV service. Llama outperforms other ABR algorithms, improving the P.1203 Mean Opinion Score (MOS) as well as reducing rebuffering by 33% when using DASH, and 68% with CMAF in the lowest latency scenario.
Llama -低延迟自适应媒体算法
近年来,包括DASH (Dynamic Adaptive streaming over HTTP)在内的HTTP自适应比特率(ABR)流已经成为互联网上最流行的视频流技术。客户端设备使用HTTP请求内容片段,使用ABR算法选择请求每个片段的质量,以权衡视频质量并避免延迟。与传统的广播方法相比,这带来了高延迟,主要是在客户端缓冲区中,它需要保存足够的数据来吸收网络条件中的任何变化。客户端采用ABR算法,该算法监控网络条件并调整要求分段的质量,以最大限度地提高用户的体验质量。客户端缓冲区的大小取决于ABR算法及时响应网络条件变化的能力,因此,低延迟直播需要ABR算法能够在较小的客户端缓冲区中表现良好。在本文中,我们提出了Llama -一种专门设计用于此类场景的新型ABR算法。我们的新ABR算法采用了在不同时间尺度上使用两个独立吞吐量测量的新思想。我们通过将Llama与四种流行的ABR算法在多个QoE指标、跨多个客户端设置以及基于商业直播电视服务的CDN日志的各种网络场景中进行比较,对其进行了评估。Llama优于其他ABR算法,提高了P.1203平均意见评分(MOS),并且在使用DASH时减少了33%的再缓冲,在最低延迟情况下使用CMAF减少了68%。
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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