About
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NVIDIA’s Audio2Face is an Omniverse application that uses a combination of AI technologies to generate facial animation and dialogue lip-sync from an audio source input.
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The application provides an array of pre- and post-process parameters to fine-tune the animation performance before exporting the result as a geometry cache.
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Audio2Face requires Windows 64-bit 1909 or above.
Specification
Minimum
CPU
Intel Core i7 (7th Generation) AMD Ryzen 5
CPU Cores
4
RAM
16GB
Storage
50GB SSD
VRAM
8GB
GPU
Any RTX GPU
Recommended
CPU
Intel Core i7 (9th Generation) AMD Ryzen 7
CPU Cores
8
RAM
32GB
Storage
500GB SSD
VRAM
10GB
GPU
GeForce RTX 3070\NVIDIA RTX A4000
Platform OS
Windows
Windows 10
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