EliaFantini/FastNRTF
Efficient 3D reconstruction and relighting of complex scenes with global illumination effects using Neural Radiance Transfer Fields
This project helps 3D artists, game developers, or visual effects professionals create realistic 3D scene renderings with complex lighting. You provide a set of images of a real-world scene, and it generates a detailed 3D model that can be re-lit under various illumination conditions. This is for professionals who need to reconstruct and relight complex environments with accurate shadows and reflections.
No commits in the last 6 months.
Use this if you need to quickly and efficiently reconstruct a 3D scene from images and then relight it with global illumination effects, without requiring extremely high-end hardware for initial setup.
Not ideal if you need real-time rendering performance for highly dynamic scenes or if you are looking for a simple, one-click solution without any technical setup.
Stars
31
Forks
5
Language
Python
License
—
Category
Last pushed
Mar 19, 2023
Commits (30d)
0
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