← Back to Model Beat
4Research·May 8

Large-Scale High-Quality 3D Gaussian Head Reconstruction from Multi-View Captures

We propose HeadsUp, a scalable feed-forward method for reconstructing high-quality 3D Gaussian heads from large-scale multi-camera setups. Our method employs an efficient encoder-decoder architecture that compresses input views into a compact latent representation. This latent representation is then decoded into a set of UV-parameterized 3D Gaussians anchored to a neutral head template. This UV representation decouples the number of 3D Gaussians from the number and resolution of input images, enabling training with many high-resolution input views. We train and evaluate our model on an…

Covered by 1 source

Related stories

ResearchUnlocking large scale AI training networks with MRC (Multipath Reliable Connection)May 5ResearchWhat Parameter Golf taught us about AI-assisted researchMay 12ResearchHow NVIDIA engineers and researchers build with CodexMay 12 · 2 sourcesResearchThe AI scientist: now academic papers can be fully automated, what does this mean for the future of research? - The ConversationMay 7