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SoftVQ-VAE: Efficient 1-Dimensional Continuous Tokenizer

Authors :
Chen, Hao
Wang, Ze
Li, Xiang
Sun, Ximeng
Chen, Fangyi
Liu, Jiang
Wang, Jindong
Raj, Bhiksha
Liu, Zicheng
Barsoum, Emad
Publication Year :
2024

Abstract

Efficient image tokenization with high compression ratios remains a critical challenge for training generative models. We present SoftVQ-VAE, a continuous image tokenizer that leverages soft categorical posteriors to aggregate multiple codewords into each latent token, substantially increasing the representation capacity of the latent space. When applied to Transformer-based architectures, our approach compresses 256x256 and 512x512 images using as few as 32 or 64 1-dimensional tokens. Not only does SoftVQ-VAE show consistent and high-quality reconstruction, more importantly, it also achieves state-of-the-art and significantly faster image generation results across different denoising-based generative models. Remarkably, SoftVQ-VAE improves inference throughput by up to 18x for generating 256x256 images and 55x for 512x512 images while achieving competitive FID scores of 1.78 and 2.21 for SiT-XL. It also improves the training efficiency of the generative models by reducing the number of training iterations by 2.3x while maintaining comparable performance. With its fully-differentiable design and semantic-rich latent space, our experiment demonstrates that SoftVQ-VAE achieves efficient tokenization without compromising generation quality, paving the way for more efficient generative models. Code and model are released.<br />Comment: Code and model: https://github.com/Hhhhhhao/continuous_tokenizer

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2412.10958
Document Type :
Working Paper