mworchel/differentiable-rendering-parametric
Differentiable Rendering of Parametric Geometry (SIGGRAPH Asia 2023)
This project helps researchers and engineers working with 3D models to accurately reconstruct objects or design lenses from images. It takes either multiple 2D views of an object or a target light pattern (caustics image) as input. The output is a precise 3D model of the object, represented by parametric curves and surfaces, or the optimized design for a lens. This is for users involved in graphics research, computer vision, or optical design.
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Use this if you need to reconstruct complex 3D shapes from images or design specialized optical lenses, and you are comfortable working with Python scripts and computational graphics.
Not ideal if you need to load real-world image data directly for reconstruction or if you are looking for a ready-to-use application rather than a research framework.
Stars
53
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3
Language
Python
License
BSD-3-Clause
Category
Last pushed
Sep 10, 2025
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