soubhiksanyal/RingNet
Learning to Regress 3D Face Shape and Expression from an Image without 3D Supervision
This tool helps you transform a standard 2D image of a face into a detailed 3D digital model of a complete human head. You provide a cropped image of a face, and it generates a 3D mesh model, optionally with texture from the original image. This is useful for researchers and professionals working with 3D animation, facial recognition, or virtual reality.
875 stars. No commits in the last 6 months.
Use this if you need to quickly create a 3D face model from a single 2D photograph for animation, research, or virtual character generation.
Not ideal if you need to create highly realistic 3D models of objects other than faces or require extremely precise measurements for medical or forensic applications.
Stars
875
Forks
173
Language
Python
License
MIT
Category
Last pushed
Mar 24, 2023
Commits (30d)
0
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