Camel: Frame-Level Bandwidth Estimation for Low-Latency Live Streaming under Video Bitrate Undershooting
Liming Liu, Zhidong Jia, Li Jiang, Wei Zhang, Lan Xie, Feng Qian, Leju Yan, Bing Yan, Qiang Ma, Zhou Sha, Wei Yang, Yixuan Ban, Xinggong Zhang

TL;DR
Camel introduces a frame-level congestion control algorithm for low-latency live streaming that improves bandwidth estimation and reduces stalls, outperforming existing methods in real-world and simulated environments.
Contribution
This paper presents Camel, a novel frame-level congestion control algorithm that leverages network feedback for better bandwidth estimation in low-latency streaming.
Findings
Camel increases 1080P resolution ratio by up to 70.8%.
Camel reduces stalling ratio by up to 14.1%.
Camel outperforms existing algorithms in simulations with up to 19.8% higher bitrate.
Abstract
Low-latency live streaming (LLS) has emerged as a popular web application, with many platforms adopting real-time protocols such as WebRTC to minimize end-to-end latency. However, we observe a counter-intuitive phenomenon: even when the actual encoded bitrate does not fully utilize the available bandwidth, stalling events remain frequent. This insufficient bandwidth utilization arises from the intrinsic temporal variations of real-time video encoding, which cause conventional packet-level congestion control algorithms to misestimate available bandwidth. When a high-bitrate frame is suddenly produced, sending at the wrong rate can either trigger packet loss or increase queueing delay, resulting in playback stalls. To address these issues, we present Camel, a novel frame-level congestion control algorithm (CCA) tailored for LLS. Our insight is to use frame-level network feedback to…
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Taxonomy
TopicsImage and Video Quality Assessment · Network Traffic and Congestion Control · Peer-to-Peer Network Technologies
