LD-ABR:一种无线网络视频传输的自适应比特率算法

Chunlei Chen, Kaijun Liu, Chen Dong, Geng Liu
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引用次数: 0

摘要

移动终端的普及使得无线场景下的视频传输变得非常重要。然而,在基站和移动终端之间实现高观看质量的视频传输是一个难题。无线场景中产生的不可预测的衰落和噪声导致剧烈的波动,使得现有的自适应比特率算法无法适应网络中快速变化的波动性和长尾问题。本文介绍了一种新的强化学习自适应比特率算法LSTM-D3QN自适应比特率算法(LD-ABR)。LD-ABR使用长短期记忆(LSTM)来预测吞吐量,并使用视频比特率、比特率切换频率、网络速度和视频暂停时间进行比特率选择,以更好地应对无线网络中的复杂变化。最后,将LD-ABR算法与Comyco算法和Pensieve算法进行了比较,结果表明LD-ABR算法在无线网络环境下具有更好的性能。在最坏的网络条件下,Pensieve模式的停机率为16%,Comyco模式的停机率为7%,LD-ABR模式的停机率仅为1%,其QoE指数比Pensieve模式高30%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LD-ABR: An Adaptive Bitrate Algorithm for Video Transmission in Wireless Network
The popularity of mobile terminals has made video transmission in wireless scenarios important. However, achieving high viewing quality video transmission between base and mobile terminals is a difficult problem. The unpredictable fading and noise generated in wireless scenarios cause drastic fluctuations, making existing adaptive bit rate algorithms unable to adapt to the rapidly changing volatility and long tail problems in the network. In this paper, we introduce LSTM-D3QN Adaptive Bitrate Algorithm (LD-ABR), a new reinforcement learning Adaptive Bitrate Algorithm. LD-ABR uses long and short-term memory (LSTM) to predict throughput, and uses video bit rate, bit rate switching frequency, network speed and video pause time for bit rate selection to better cope with the complex changes in wireless networks. Finally, LD-ABR is compared with Comyco and Pensieve algorithms and the results show that LD-ABR has better performance in wireless network environment. Under the worst network conditions, Pensieve mode has a 16% chance of stopping, Comyco has a 7% chance, and LD-ABR mode has only a 1% chance, and its QoE index is more than 30% higher than Pensieve.
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