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Developed by google
A generative model based on stochastic differential equations that can produce high-quality images from a prior distribution by gradually removing noise
Downloads 172
Release Time : 7/19/2022

Model Overview

This model proposes a Stochastic Differential Equation (SDE) framework that transforms data distribution into a prior distribution by gradually injecting noise and generates data through reverse-time SDE. It combines the advantages of score-based generative modeling and diffusion probabilistic modeling, supporting high-resolution image generation.

Model Features

Stochastic Differential Equation framework
Achieves smooth transformation between data distribution and prior distribution through forward and reverse-time SDE
High-resolution image generation
Capable of generating high-quality images at 1024×1024 resolution
Predictor-corrector framework
Introduces a predictor-corrector mechanism to correct errors in discretized reverse-time SDE evolution
Neural ODE equivalence
Provides equivalent neural ODE, supporting exact likelihood computation and improved sampling efficiency

Model Capabilities

Unconditional image generation
High-resolution image synthesis
Image inpainting
Image colorization

Use Cases

Creative content generation
High-resolution face generation
Generates photorealistic face images at 1024×1024 resolution
Example images demonstrate high-quality face generation results
Image editing
Image inpainting
Uses score-based models to restore incomplete or damaged images
Image colorization
Automatically colorizes black-and-white images
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