Machine Perception-Driven Facial Image Compression: A Layered Generative Approach

Yuefeng Zhang, Chuanmin Jia, Jianhui Chang, Siwei Ma

Published: 01 Apr 2025, Last Modified: 25 Mar 2026IEEE Transactions on Circuits and Systems for Video TechnologyEveryoneRevisionsCC BY-SA 4.0
Abstract: In this age of information, images are a critical medium for storing and transmitting information. With the rapid growth of image data amount, visual compression and visual data perception are two important research topics attracting a lot of attention. However, those two topics are rarely discussed together and follow separate research paths. Due to the compact compressed domain representation offered by learning-based image compression methods, there exists possibility to have one stream targeting both efficient data storage and compression, and machine perception tasks. In this paper, we propose a layered generative facial image compression model achieving high human vision-oriented image reconstructed quality, even at extreme compression ratios. To obtain analysis efficiency and flexibility, a task-agnostic learning-based compression model is proposed, which effectively supports various compressed domain-based analytical tasks while preserving outstanding reconstructed perceptual quality, compared with traditional and learning-based codecs. In addition, joint optimization schedule is adopted to acquire best balance point among compression ratio, reconstructed image quality, and downstream perception performance. Experimental results verify that our proposed compressed domain-based multi-task analysis method can achieve comparable analysis results against the RGB image-based methods with up to 99.6% bit rate saving (i.e., compared with taking original RGB image as the analysis model input). The practical ability of our model is further justified from model size and information fidelity aspects.
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