English

Learned Image Coding for Machines: A Content-Adaptive Approach

Image and Video Processing 2021-10-14 v3 Computer Vision and Pattern Recognition Machine Learning

Abstract

Today, according to the Cisco Annual Internet Report (2018-2023), the fastest-growing category of Internet traffic is machine-to-machine communication. In particular, machine-to-machine communication of images and videos represents a new challenge and opens up new perspectives in the context of data compression. One possible solution approach consists of adapting current human-targeted image and video coding standards to the use case of machine consumption. Another approach consists of developing completely new compression paradigms and architectures for machine-to-machine communications. In this paper, we focus on image compression and present an inference-time content-adaptive finetuning scheme that optimizes the latent representation of an end-to-end learned image codec, aimed at improving the compression efficiency for machine-consumption. The conducted experiments show that our online finetuning brings an average bitrate saving (BD-rate) of -3.66% with respect to our pretrained image codec. In particular, at low bitrate points, our proposed method results in a significant bitrate saving of -9.85%. Overall, our pretrained-and-then-finetuned system achieves -30.54% BD-rate over the state-of-the-art image/video codec Versatile Video Coding (VVC).

Keywords

Cite

@article{arxiv.2108.09992,
  title  = {Learned Image Coding for Machines: A Content-Adaptive Approach},
  author = {Nam Le and Honglei Zhang and Francesco Cricri and Ramin Ghaznavi-Youvalari and Hamed Rezazadegan Tavakoli and Esa Rahtu},
  journal= {arXiv preprint arXiv:2108.09992},
  year   = {2021}
}

Comments

Fig 4 correction

R2 v1 2026-06-24T05:20:14.450Z