A Noise Constrained Diffusion (NC-Diffusion) Framework for High Fidelity Image Compression
Zhenyu Du, Yanbo Gao, Shuai Li, Yiyang Li, Hui Yuan, Mao Ye

TL;DR
This paper introduces NC-Diffusion, a novel diffusion framework for high-fidelity image compression that addresses noise mismatch issues and enhances image details, outperforming existing methods.
Contribution
The paper proposes a noise constrained diffusion process that aligns quantization noise with diffusion noise, improving inference efficiency and image fidelity in compression.
Findings
Achieves state-of-the-art performance on benchmark datasets.
Effectively reduces noise mismatch between compression and diffusion.
Enhances high-frequency details with an adaptive filtering module.
Abstract
With the great success of diffusion models in image generation, diffusion-based image compression is attracting increasing interests. However, due to the random noise introduced in the diffusion learning, they usually produce reconstructions with deviation from the original images, leading to suboptimal compression results. To address this problem, in this paper, we propose a Noise Constrained Diffusion (NC-Diffusion) framework for high fidelity image compression. Unlike existing diffusion-based compression methods that add random Gaussian noise and direct the noise into the image space, the proposed NC-Diffusion formulates the quantization noise originally added in the learned image compression as the noise in the forward process of diffusion. Then a noise constrained diffusion process is constructed from the ground-truth image to the initial compression result generated with…
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