Simple diffusion: End-to-end diffusion for high resolution images

26 Jan 2023  ·  Emiel Hoogeboom, Jonathan Heek, Tim Salimans ·

Currently, applying diffusion models in pixel space of high resolution images is difficult. Instead, existing approaches focus on diffusion in lower dimensional spaces (latent diffusion), or have multiple super-resolution levels of generation referred to as cascades. The downside is that these approaches add additional complexity to the diffusion framework. This paper aims to improve denoising diffusion for high resolution images while keeping the model as simple as possible. The paper is centered around the research question: How can one train a standard denoising diffusion models on high resolution images, and still obtain performance comparable to these alternate approaches? The four main findings are: 1) the noise schedule should be adjusted for high resolution images, 2) It is sufficient to scale only a particular part of the architecture, 3) dropout should be added at specific locations in the architecture, and 4) downsampling is an effective strategy to avoid high resolution feature maps. Combining these simple yet effective techniques, we achieve state-of-the-art on image generation among diffusion models without sampling modifiers on ImageNet.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Conditional Image Generation ImageNet 128x128 simple diffusion (U-Net) FID 2.88 # 4
Inception score 137.3 # 6
Conditional Image Generation ImageNet 128x128 simple diffusion (U-ViT, L) FID 3.23 # 6
Inception score 171.9 # 3
Image Generation ImageNet 256x256 simple diffusion (U-ViT, L) FID 3.75 # 24
Image Generation ImageNet 256x256 simple diffusion (U-Net) FID 3.71 # 23
Image Generation ImageNet 512x512 simple diffusion (U-ViT, L) FID 4.53 # 22
Inception score 205.3 # 10
Image Generation ImageNet 512x512 simple diffusion (U-Net) FID 4.28 # 20
Inception score 171 # 12
Text-to-Image Generation MS COCO simple diffusion (U-ViT) FID 8.3 # 23

Methods