DiP: Taming Diffusion Models in Pixel Space
By: Zhennan Chen , Junwei Zhu , Xu Chen and more
Potential Business Impact:
Creates detailed pictures much faster.
Diffusion models face a fundamental trade-off between generation quality and computational efficiency. Latent Diffusion Models (LDMs) offer an efficient solution but suffer from potential information loss and non-end-to-end training. In contrast, existing pixel space models bypass VAEs but are computationally prohibitive for high-resolution synthesis. To resolve this dilemma, we propose DiP, an efficient pixel space diffusion framework. DiP decouples generation into a global and a local stage: a Diffusion Transformer (DiT) backbone operates on large patches for efficient global structure construction, while a co-trained lightweight Patch Detailer Head leverages contextual features to restore fine-grained local details. This synergistic design achieves computational efficiency comparable to LDMs without relying on a VAE. DiP is accomplished with up to 10$\times$ faster inference speeds than previous method while increasing the total number of parameters by only 0.3%, and achieves an 1.90 FID score on ImageNet 256$\times$256.
Similar Papers
PixelDiT: Pixel Diffusion Transformers for Image Generation
CV and Pattern Recognition
Makes AI create clearer, more detailed pictures.
PixPerfect: Seamless Latent Diffusion Local Editing with Discriminative Pixel-Space Refinement
CV and Pattern Recognition
Fixes weird spots in edited pictures.
DeCo: Frequency-Decoupled Pixel Diffusion for End-to-End Image Generation
CV and Pattern Recognition
Makes AI create clearer pictures faster.