

Texgen
Overview :
TexGen is an innovative multi-view sampling and resampling framework for synthesizing 3D textures from arbitrary textual descriptions. It leverages a pre-trained text-to-image diffusion model, implementing consistent view sampling and attention-guided multi-view sampling strategies, along with noise resampling techniques, to significantly enhance the texture quality of 3D objects, achieving high viewpoint consistency and rich appearance details.
Target Users :
TexGen is designed for professionals and teams in fields such as 3D modeling, game development, and filmmaking, who require the rapid generation of high-quality 3D textures based on textual descriptions.
Use Cases
Generate textures for a medieval-style clock
Design textures for an Iron Man-style backpack
Create textures for a next-generation red NASCAR race car
Design textures for a silver Mandalorian helmet
Features
Multi-view sampling to reduce seam issues in texture stitching
Attention-guided view sampling to transfer appearance information across views
Noise resampling technique to improve texture detail retention
Pre-trained text-to-image diffusion model to boost generation efficiency
Texture editing for 3D objects while preserving original features
Extensive qualitative and quantitative evaluations demonstrating superior performance
How to Use
Step 1: Visit the TexGen website
Step 2: Read the product introduction and overview of methods
Step 3: Review comparison results with existing technologies
Step 4: Browse the video gallery to understand the generated texture effects
Step 5: Download relevant code or datasets for local use as needed
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