The content discusses the development of a novel Unified Image Generation-Compression (UIGC) framework for ultra-low bitrate image coding. By merging generation and compression processes, the framework focuses on modeling the prior distribution of image content to achieve superior perceptual quality in extreme compression scenarios. Key components include vector-quantized image models, a multi-stage transformer, and an edge-preserving checkerboard mask pattern. Experimental results demonstrate the effectiveness of UIGC in maintaining visual quality under ultra-low bitrate conditions.
The paper addresses challenges in ultra-low bitrate compression by proposing a novel approach that integrates generation and compression processes. By focusing on prior distribution modeling, the UIGC framework achieves enhanced perceptual quality in extreme compression scenarios. The use of vector-quantized image models, a multi-stage transformer, and an edge-preserving mask pattern contributes to efficient entropy estimation and token regeneration.
The proposed UIGC framework demonstrates superior performance over existing codecs in maintaining perceptual quality under ultra-low bitrate conditions. By leveraging advanced techniques such as vector quantization, multi-stage transformers, and edge-preserving masks, the framework paves the way for future developments in generative compression technology.
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by Naifu Xue,Qi... às arxiv.org 03-07-2024
https://arxiv.org/pdf/2403.03736.pdfPerguntas Mais Profundas