Product-Quantised Image Representation for High-Quality Image Synthesis

Generative AI & LLMs
Published: arXiv: 2510.03191v1
Authors

Denis Zavadski Nikita Philip Tatsch Carsten Rother

Abstract

Product quantisation (PQ) is a classical method for scalable vector encoding, yet it has seen limited usage for latent representations in high-fidelity image generation. In this work, we introduce PQGAN, a quantised image autoencoder that integrates PQ into the well-known vector quantisation (VQ) framework of VQGAN. PQGAN achieves a noticeable improvement over state-of-the-art methods in terms of reconstruction performance, including both quantisation methods and their continuous counterparts. We achieve a PSNR score of 37dB, where prior work achieves 27dB, and are able to reduce the FID, LPIPS, and CMMD score by up to 96%. Our key to success is a thorough analysis of the interaction between codebook size, embedding dimensionality, and subspace factorisation, with vector and scalar quantisation as special cases. We obtain novel findings, such that the performance of VQ and PQ behaves in opposite ways when scaling the embedding dimension. Furthermore, our analysis shows performance trends for PQ that help guide optimal hyperparameter selection. Finally, we demonstrate that PQGAN can be seamlessly integrated into pre-trained diffusion models. This enables either a significantly faster and more compute-efficient generation, or a doubling of the output resolution at no additional cost, positioning PQ as a strong extension for discrete latent representation in image synthesis.

Paper Summary

Problem
The main problem addressed by this research paper is the need for scalable solutions in image processing and generation. As datasets grow larger and models become increasingly compute-intensive, traditional methods are no longer sufficient to handle the increasing demands of high-quality image synthesis. The authors aim to address this challenge by developing a new image representation that is both efficient and effective.
Key Innovation
The key innovation of this work is the introduction of Product-Quantised Image Representation for High-Quality Image Synthesis, or PQGAN. PQGAN integrates product quantisation (PQ) into the vector quantisation (VQ) framework of VQ-GAN, achieving a noticeable improvement over state-of-the-art methods in terms of reconstruction performance. The authors also conduct a thorough analysis of the interaction between codebook size, embedding dimensionality, and subspace factorisation, which leads to novel findings and performance trends that guide optimal hyperparameter selection.
Practical Impact
The practical impact of this research is significant. PQGAN enables the seamless integration of pre-trained diffusion models into product-quantised latent spaces, allowing for either significantly faster generation or a doubling of the output resolution at no additional cost. This makes PQGAN a strong extension for discrete latent representation in image synthesis. The authors demonstrate that PQGAN can be used to achieve state-of-the-art image representation quality, surpassing even continuous counterparts. This has the potential to revolutionize the field of image synthesis and generation.
Analogy / Intuitive Explanation
Imagine a library with an infinite number of books. Traditional methods of storing and retrieving information would require storing every book in its entirety, leading to a vast amount of storage space. PQGAN is like a new library system that uses a combination of indexing and compression to store and retrieve information more efficiently. Instead of storing every book, PQGAN stores a set of unique "bookmarks" that can be used to reconstruct the entire book. This allows for faster and more efficient storage and retrieval of information, making it ideal for high-quality image synthesis.
Paper Information
Categories:
cs.CV
Published Date:

arXiv ID:

2510.03191v1

Quick Actions