ajzhai/NeRF2Physics
[CVPR 2024] Physical Property Understanding from Language-Embedded Feature Fields
This project helps you understand the physical properties of real-world objects from their images. You provide multiple pictures of an object taken from different angles, and it can tell you its mass density, friction, or Shore hardness. This is useful for engineers, product designers, or anyone needing to estimate object properties without physical measurements.
Use this if you need to determine physical properties like density, friction, or hardness for 3D objects from images alone.
Not ideal if you require extremely high precision or are working with objects that lack clear visual distinctions for physical properties.
Stars
89
Forks
4
Language
Python
License
MIT
Category
Last pushed
Nov 16, 2025
Commits (30d)
0
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