SheldonTsui/Matlaber
MATLABER: Material-Aware Text-to-3D via LAtent BRDF auto-EncodeR
This project helps 3D artists, designers, and researchers quickly create realistic 3D objects with specific material properties from simple text descriptions. You provide a text prompt describing an object and its desired material, and it generates a 3D model that accurately reflects those visual and tactile characteristics. This is ideal for anyone working with virtual environments, product visualization, or digital content creation.
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Use this if you need to rapidly generate 3D models with high-fidelity material properties based on text descriptions for design or research purposes.
Not ideal if you require precise manual control over every polygon and texture map, or if your primary focus is on 2D image manipulation.
Stars
95
Forks
1
Language
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License
Apache-2.0
Category
Last pushed
Sep 18, 2023
Commits (30d)
0
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