English

Standard compliant video coding using low complexity, switchable neural wrappers

Computer Vision and Pattern Recognition 2024-07-11 v1 Multimedia Image and Video Processing

Abstract

The proliferation of high resolution videos posts great storage and bandwidth pressure on cloud video services, driving the development of next-generation video codecs. Despite great progress made in neural video coding, existing approaches are still far from economical deployment considering the complexity and rate-distortion performance tradeoff. To clear the roadblocks for neural video coding, in this paper we propose a new framework featuring standard compatibility, high performance, and low decoding complexity. We employ a set of jointly optimized neural pre- and post-processors, wrapping a standard video codec, to encode videos at different resolutions. The rate-distorion optimal downsampling ratio is signaled to the decoder at the per-sequence level for each target rate. We design a low complexity neural post-processor architecture that can handle different upsampling ratios. The change of resolution exploits the spatial redundancy in high-resolution videos, while the neural wrapper further achieves rate-distortion performance improvement through end-to-end optimization with a codec proxy. Our light-weight post-processor architecture has a complexity of 516 MACs / pixel, and achieves 9.3% BD-Rate reduction over VVC on the UVG dataset, and 6.4% on AOM CTC Class A1. Our approach has the potential to further advance the performance of the latest video coding standards using neural processing with minimal added complexity.

Keywords

Cite

@article{arxiv.2407.07395,
  title  = {Standard compliant video coding using low complexity, switchable neural wrappers},
  author = {Yueyu Hu and Chenhao Zhang and Onur G. Guleryuz and Debargha Mukherjee and Yao Wang},
  journal= {arXiv preprint arXiv:2407.07395},
  year   = {2024}
}

Comments

Accepted by IEEE ICIP 2024

R2 v1 2026-06-28T17:35:16.079Z