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Ddpm Bedroom 256

Developed by google
A high-quality image generation model based on diffusion probabilistic models, excelling in unconditional image generation tasks.
Downloads 808
Release Time : 7/19/2022

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 and achieves state-of-the-art performance on datasets like CIFAR10 and LSUN.

Model Features

High-Quality Image Generation
Achieves an Inception Score of 9.46 and an FID score of 3.17 on CIFAR10, reaching state-of-the-art performance.
Progressive Denoising
Gradually generates clear images from noise by simulating the reverse steps of the diffusion process.
Multi-Scheduler Support
Supports various noise schedulers like DDPM, DDIM, and PNDM to balance generation quality and speed.

Model Capabilities

Unconditional Image Generation
Progressive Image Synthesis
High-Quality Sample Generation

Use Cases

Creative Content Generation
Indoor Scene Generation
Generates bedroom scene images at 256x256 resolution
Sample quality comparable to ProgressiveGAN
Data Augmentation
Training Data Expansion
Generates additional training samples for computer vision tasks
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