GravLensDiffusion is a deep learning project that generates high-quality images of Strong Gravitational Lensing using Deep Generative Modeling, specifically Diffusion Models. The project implements a DDPM (Denoising Diffusion Probabilistic Model) following the seminal paper on DDPMs closely, trained on a dataset of 10,000 strong lensing images. This model tackles data scarcity and imbalance, generating high-fidelity images to support astrophysical research and automated classification.
Strong gravitational lensing serves as a crucial probe into dark matter substructure, helping us better understand its fundamental nature. While traditional simulations are computationally intensive and time-consuming, our diffusion-based approach offers a faster, more efficient alternative for generating realistic lensing images. This project specifically focuses on implementing a DDPM to generate high-quality simulations that can potentially augment existing datasets and support future research in gravitational lensing analysis.
The GIF shows the progression of 100 random noise samples to 100 generated images of Strong Gravitational Lensing over 1000 timesteps: