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Main Authors: Feng, Ruoyu, Qi, Yunpeng, Liu, Jinming, Gao, Yixin, Li, Xin, Jin, Xin, Chen, Zhibo
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.22549
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author Feng, Ruoyu
Qi, Yunpeng
Liu, Jinming
Gao, Yixin
Li, Xin
Jin, Xin
Chen, Zhibo
author_facet Feng, Ruoyu
Qi, Yunpeng
Liu, Jinming
Gao, Yixin
Li, Xin
Jin, Xin
Chen, Zhibo
contents Image compression methods are usually optimized isolatedly for human perception or machine analysis tasks. We reveal fundamental commonalities between these objectives: preserving accurate semantic information is paramount, as it directly dictates the integrity of critical information for intelligent tasks and aids human understanding. Concurrently, enhanced perceptual quality not only improves visual appeal but also, by ensuring realistic image distributions, benefits semantic feature extraction for machine tasks. Based on this insight, we propose Diff-ICMH, a generative image compression framework aiming for harmonizing machine and human vision in image compression. It ensures perceptual realism by leveraging generative priors and simultaneously guarantees semantic fidelity through the incorporation of Semantic Consistency loss (SC loss) during training. Additionally, we introduce the Tag Guidance Module (TGM) that leverages highly semantic image-level tags to stimulate the pre-trained diffusion model's generative capabilities, requiring minimal additional bit rates. Consequently, Diff-ICMH supports multiple intelligent tasks through a single codec and bitstream without any task-specific adaptation, while preserving high-quality visual experience for human perception. Extensive experimental results demonstrate Diff-ICMH's superiority and generalizability across diverse tasks, while maintaining visual appeal for human perception. Code is available at: https://github.com/RuoyuFeng/Diff-ICMH.
format Preprint
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institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Diff-ICMH: Harmonizing Machine and Human Vision in Image Compression with Generative Prior
Feng, Ruoyu
Qi, Yunpeng
Liu, Jinming
Gao, Yixin
Li, Xin
Jin, Xin
Chen, Zhibo
Computer Vision and Pattern Recognition
Image compression methods are usually optimized isolatedly for human perception or machine analysis tasks. We reveal fundamental commonalities between these objectives: preserving accurate semantic information is paramount, as it directly dictates the integrity of critical information for intelligent tasks and aids human understanding. Concurrently, enhanced perceptual quality not only improves visual appeal but also, by ensuring realistic image distributions, benefits semantic feature extraction for machine tasks. Based on this insight, we propose Diff-ICMH, a generative image compression framework aiming for harmonizing machine and human vision in image compression. It ensures perceptual realism by leveraging generative priors and simultaneously guarantees semantic fidelity through the incorporation of Semantic Consistency loss (SC loss) during training. Additionally, we introduce the Tag Guidance Module (TGM) that leverages highly semantic image-level tags to stimulate the pre-trained diffusion model's generative capabilities, requiring minimal additional bit rates. Consequently, Diff-ICMH supports multiple intelligent tasks through a single codec and bitstream without any task-specific adaptation, while preserving high-quality visual experience for human perception. Extensive experimental results demonstrate Diff-ICMH's superiority and generalizability across diverse tasks, while maintaining visual appeal for human perception. Code is available at: https://github.com/RuoyuFeng/Diff-ICMH.
title Diff-ICMH: Harmonizing Machine and Human Vision in Image Compression with Generative Prior
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2511.22549