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Papers/Diffusion Models Are Innate One-Step Generators

Diffusion Models Are Innate One-Step Generators

Bowen Zheng, Tianming Yang

2024-05-31Image Generation
PaperPDFCode(official)

Abstract

Diffusion Models (DMs) have achieved great success in image generation and other fields. By fine sampling through the trajectory defined by the SDE/ODE solver based on a well-trained score model, DMs can generate remarkable high-quality results. However, this precise sampling often requires multiple steps and is computationally demanding. To address this problem, instance-based distillation methods have been proposed to distill a one-step generator from a DM by having a simpler student model mimic a more complex teacher model. Yet, our research reveals an inherent limitations in these methods: the teacher model, with more steps and more parameters, occupies different local minima compared to the student model, leading to suboptimal performance when the student model attempts to replicate the teacher. To avoid this problem, we introduce a novel distributional distillation method, which uses an exclusive distributional loss. This method exceeds state-of-the-art (SOTA) results while requiring significantly fewer training images. Additionally, we show that DMs' layers are differentially activated at different time steps, leading to an inherent capability to generate images in a single step. Freezing most of the convolutional layers in a DM during distributional distillation enables this innate capability and leads to further performance improvements. Our method achieves the SOTA results on CIFAR-10 (FID 1.54), AFHQv2 64x64 (FID 1.23), FFHQ 64x64 (FID 0.85) and ImageNet 64x64 (FID 1.16) with great efficiency. Most of those results are obtained with only 5 million training images within 6 hours on 8 A100 GPUs.

Results

TaskDatasetMetricValueModel
Image GenerationImageNet 64x64FID1.16GDD-I
Image GenerationImageNet 64x64NFE1GDD-I
Image GenerationImageNet 64x64FID1.42GDD
Image GenerationImageNet 64x64NFE1GDD
Image GenerationCIFAR-10FID1.54GDD-I
Image GenerationCIFAR-10NFE1GDD-I

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