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DCTdiff: Intriguing Properties of Image Generative Modeling in the DCT Space

DCTdiff, a diffusion generative paradigm in the discrete cosine transform space, outperforms pixel-based models in generative quality and training efficiency, and scales up to high-resolution generation without requiring latent diffusion.

Year
2024
Venue
arXiv 2024
Authors
9
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arxiv.org/abs/2412.15032v2ARXIV-DEFAULT
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Abstract

This paper explores image modeling from the frequency space and introduces DCTdiff, an end-to-end diffusion generative paradigm that efficiently models images in the discrete cosine transform (DCT) space. We investigate the design space of DCTdiff and reveal the key design factors. Experiments on different frameworks (UViT, DiT), generation tasks, and various diffusion samplers demonstrate that DCTdiff outperforms pixel-based diffusion models regarding generative quality and training efficiency. Remarkably, DCTdiff can seamlessly scale up to 512$\times$512 resolution without using the latent diffusion paradigm and beats latent diffusion (using SD-VAE) with only 1/4 training cost. Finally, we illustrate several intriguing properties of DCT image modeling. For example, we provide a theoretical proof of why 'image diffusion can be seen as spectral autoregression', bridging the gap between diffusion and autoregressive models. The effectiveness of DCTdiff and the introduced properties suggest a promising direction for image modeling in the frequency space. The code is https://github.com/forever208/DCTdiff.

Authors

9