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Most Influential SIGCOMM 2020 Paper · 2026-03 edition

Neural-Enhanced Live Streaming: Improving Live Video Ingest Via Online Learning

Jaehong Kim; Youngmok Jung; Hyunho Yeo; Juncheol Ye; Dongsu Han

Venue
ACM SIGCOMM Conference (SIGCOMM) 2020
Recognition
Most Influential SIGCOMM 2020 Paper (Rank No. 10)
Edition
2026-03
Impact factor
4
Certificate ID
16fce21ca94fc1f5

Abstract

Live video accounts for a significant volume of today's Internet video. Despite a large number of efforts to enhance user quality of experience (QoE) both at the ingest and distribution side of live video, the fundamental limitations are that streamer's upstream bandwidth and computational capacity limit the quality of experience of thousands of viewers. To overcome this limitation, we design LiveNAS, a new live video ingest framework that enhances the origin stream's quality by leveraging computation at ingest servers. Our ingest server applies neural super-resolution on the original stream, while imposing minimal overhead on ingest clients. LiveNAS employs online learning to maximize the quality gain and dynamically adjusts the resource use to the real-time quality improvement. LiveNAS delivers high-quality live streams up to 4K resolution, outperforming WebRTC by 1.96 dB on average in Peak-Signal-to-Noise-Ratio on real video streams and network traces, which leads to 12%-69% QoE improvement for live stream viewers.

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