Loss-tolerant neural video codec aware congestion control for real time video communication
Zhengxu Xia, Hanchen Li, Junchen Jiang

TL;DR
This paper introduces a loss-tolerant neural video codec aware reinforcement learning congestion control method that improves real-time video communication by reducing training time, enhancing video quality, and decreasing delays and stalls.
Contribution
It leverages the packet loss resilience of neural video codecs to improve RL-based congestion control, a novel approach not fully explored before.
Findings
Reduces RL training time by 41%
Increases mean video quality by 0.3 to 1.6dB
Lowers tail frame delay and video stalls significantly
Abstract
Because of reinforcement learning's (RL) ability to automatically create more adaptive controlling logics beyond the hand-crafted heuristics, numerous effort has been made to apply RL to congestion control (CC) design for real time video communication (RTC) applications and has successfully shown promising benefits over the rule-based RTC CCs. Online reinforcement learning is often adopted to train the RL models so the models can directly adapt to real network environments. However, its trail-and-error manner can also cause catastrophic degradation of the quality of experience (QoE) of RTC application at run time. Thus, safeguard strategies such as falling back to hand-crafted heuristics can be used to run along with RL models to guarantee the actions explored in the training sensible, despite that these safeguard strategies interrupt the learning process and make it more challenging to…
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Taxonomy
TopicsCCD and CMOS Imaging Sensors · Advanced Memory and Neural Computing · Video Coding and Compression Technologies
