CADC: Content Adaptive Diffusion-Based Generative Image Compression
Xihua Sheng, Lingyu Zhu, Tianyu Zhang, Dong Liu, Shiqi Wang, Jing Wang

TL;DR
This paper introduces a novel content-adaptive diffusion-based image compression method that dynamically aligns encoding and decoding processes with image semantics, significantly improving ultra-low bitrate reconstruction quality.
Contribution
The authors propose three innovations: adaptive quantization, content-aware information concentration, and bitrate-free semantic guidance, addressing key limitations of existing diffusion-based image codecs.
Findings
Enhanced image reconstruction quality at ultra-low bitrates.
Effective content adaptation through learned spatial uncertainty maps.
Semantic guidance without additional bitrate overhead.
Abstract
Diffusion-based generative image compression has demonstrated remarkable potential for achieving realistic reconstruction at ultra-low bitrates. The key to unlocking this potential lies in making the entire compression process content-adaptive, ensuring that the encoder's representation and the decoder's generative prior are dynamically aligned with the semantic and structural characteristics of the input image. However, existing methods suffer from three critical limitations that prevent effective content adaptation. First, isotropic quantization applies a uniform quantization step, failing to adapt to the spatially varying complexity of image content and creating a misalignment with the diffusion model's noise-dependent prior. Second, the information concentration bottleneck -- arising from the dimensional mismatch between the high-dimensional noisy latent and the diffusion decoder's…
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Taxonomy
TopicsAdvanced Data Compression Techniques · Image and Video Quality Assessment · Generative Adversarial Networks and Image Synthesis
