Ddpm Cifar10 32
High-quality image generation model based on diffusion probabilistic models, excelling on CIFAR10 and LSUN datasets.
Downloads 30.58k
Release Time : 6/16/2022
Model Overview
DDPM is a latent variable model inspired by non-equilibrium thermodynamics, generating high-quality images through a progressive denoising process. It supports unconditional image generation tasks and achieves state-of-the-art FID scores on CIFAR10 and 256x256 LSUN datasets.
Model Features
High-Quality Image Generation
Achieves an FID score of 3.17 on the CIFAR10 dataset, with sample quality comparable to ProgressiveGAN.
Progressive Denoising
Generates images through a natural process of gradually removing noise, supporting progressive lossy decompression schemes.
Multi-Scheduler Support
Supports various noise schedulers such as DDPM, DDIM, and PNDM, allowing flexible choices between generation quality and speed.
Model Capabilities
Unconditional Image Generation
High-Quality Sample Synthesis
Progressive Image Denoising
Use Cases
Image Generation
CIFAR10 Image Generation
Generates 32x32 resolution CIFAR10-style images.
Inception score 9.46, FID score 3.17
High-Resolution Image Generation
Generates 256x256 resolution LSUN-style images.
Sample quality comparable to ProgressiveGAN
Featured Recommended AI Models
Š 2025AIbase