Deadline-Aware Transmission Control for Real-Time Video Streaming

Lei Zhang, Yongchang Cui, Junchen Pan, Yong Jiang
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引用次数: 1

Abstract

The deadline requirements of real-time applications rapidly increase in recent years (e.g., cloud gaming, cloud VR, online conferencing). Due to diverse network conditions, meeting deadline requirements for these applications has become one of the research hotspots. However, the current schemes focus on providing high bitrate instead of meeting deadline requirements. In this paper, we propose D3T, a flexible deadline-aware transmission mechanism that aims to improve user quality of experience (QoE) for real-time video streaming. To fulfill the diverse deadline requirements over fluctuating network conditions, D3T uses a deadline-aware scheduler to select the high priority frame before the deadline. To reduce congestion and retransmission delay, we leverage a deep reinforcement learning algorithm to make decisions of sending rate and FEC (forward error correction) redundancy ratio based on observed network status and frame information. We evaluate D3T via trace-driven simulator spanning diverse network environments, video contents and QoE metrics. D3T significantly improves the frame completion rate by reducing the bandwidth waste before the deadline. In the considered scenarios, D3T outperforms previously approaches with the improvements in average QoE of 57%.
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实时视频流的截止时间感知传输控制
近年来,实时应用(如云游戏、云VR、在线会议)的截止日期要求迅速增加。由于网络条件的多样性,满足这些应用程序的截止日期要求已成为研究热点之一。然而,目前的方案侧重于提供高比特率,而不是满足最后期限的要求。在本文中,我们提出了D3T,一种灵活的截止日期感知传输机制,旨在提高实时视频流的用户体验质量(QoE)。为了在波动的网络条件下满足不同的截止日期要求,D3T使用截止日期感知调度器在截止日期之前选择高优先级帧。为了减少拥塞和重传延迟,我们利用深度强化学习算法根据观察到的网络状态和帧信息来决定发送速率和FEC(前向纠错)冗余比。我们通过跟踪驱动的模拟器评估D3T,该模拟器跨越不同的网络环境、视频内容和QoE指标。D3T通过减少截止日期前的带宽浪费,显著提高了帧完成率。在考虑的场景中,D3T优于以前的方法,平均QoE提高了57%。
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