Adaptive Video Encoding For Different Video Codecs
Gangadharan Esakki, Andreas Panayides, Venkatesh Jatla, Marios, Pattichis

TL;DR
This paper proposes an adaptive video encoding method that optimizes multiple objectives across different codecs using predictive models, enabling real-time adaptation and achieving bitrate savings.
Contribution
It introduces a universal adaptive encoding framework based on multi-objective optimization and regression models applicable to various codecs.
Findings
Effective real-time adaptation across codecs like SVT-AV1 and x265.
Significant bitrate savings demonstrated through objective and subjective metrics.
Versatile approach applicable to multiple video datasets and resolutions.
Abstract
By 2022, we expect video traffic to reach 82% of the total internet traffic. Undoubtedly, the abundance of video-driven applications will likely lead internet video traffic percentage to a further increase in the near future, enabled by associate advances in video devices' capabilities. In response to this ever-growing demand, the Alliance for Open Media (AOM) and the Joint Video Experts Team (JVET) have demonstrated strong and renewed interest in developing new video codecs. In the fast-changing video codecs' landscape, there is thus, a genuine need to develop adaptive methods that can be universally applied to different codecs. In this study, we formulate video encoding as a multi-objective optimization process where video quality (as a function of VMAF and PSNR), bitrate demands, and encoding rate (in encoded frames per second) are jointly optimized, going beyond the standard video…
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