English

Machines Serve Human: A Novel Variable Human-machine Collaborative Compression Framework

Computer Vision and Pattern Recognition 2025-11-13 v1

Abstract

Human-machine collaborative compression has been receiving increasing research efforts for reducing image/video data, serving as the basis for both human perception and machine intelligence. Existing collaborative methods are dominantly built upon the de facto human-vision compression pipeline, witnessing deficiency on complexity and bit-rates when aggregating the machine-vision compression. Indeed, machine vision solely focuses on the core regions within the image/video, requiring much less information compared with the compressed information for human vision. In this paper, we thus set out the first successful attempt by a novel collaborative compression method based on the machine-vision-oriented compression, instead of human-vision pipeline. In other words, machine vision serves as the basis for human vision within collaborative compression. A plug-and-play variable bit-rate strategy is also developed for machine vision tasks. Then, we propose to progressively aggregate the semantics from the machine-vision compression, whilst seamlessly tailing the diffusion prior to restore high-fidelity details for human vision, thus named as diffusion-prior based feature compression for human and machine visions (Diff-FCHM). Experimental results verify the consistently superior performances of our Diff-FCHM, on both machine-vision and human-vision compression with remarkable margins. Our code will be released upon acceptance.

Keywords

Cite

@article{arxiv.2511.08915,
  title  = {Machines Serve Human: A Novel Variable Human-machine Collaborative Compression Framework},
  author = {Zifu Zhang and Shengxi Li and Xiancheng Sun and Mai Xu and Zhengyuan Liu and Jingyuan Xia},
  journal= {arXiv preprint arXiv:2511.08915},
  year   = {2025}
}
R2 v1 2026-07-01T07:33:15.867Z