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RGBAvatar: Reduced Gaussian Blendshapes for Online Modeling of Head Avatars

About

We present Reduced Gaussian Blendshapes Avatar (RGBAvatar), a method for reconstructing photorealistic, animatable head avatars at speeds sufficient for on-the-fly reconstruction. Unlike prior approaches that utilize linear bases from 3D morphable models (3DMM) to model Gaussian blendshapes, our method maps tracked 3DMM parameters into reduced blendshape weights with an MLP, leading to a compact set of blendshape bases. The learned compact base composition effectively captures essential facial details for specific individuals, and does not rely on the fixed base composition weights of 3DMM, leading to enhanced reconstruction quality and higher efficiency. To further expedite the reconstruction process, we develop a novel color initialization estimation method and a batch-parallel Gaussian rasterization process, achieving state-of-the-art quality with training throughput of about 630 images per second. Moreover, we propose a local-global sampling strategy that enables direct on-the-fly reconstruction, immediately reconstructing the model as video streams in real time while achieving quality comparable to offline settings. Our source code is available at https://github.com/gapszju/RGBAvatar.

Linzhou Li, Yumeng Li, Yanlin Weng, Youyi Zheng, Kun Zhou• 2025

Related benchmarks

TaskDatasetResultRank
Head Avatar ReconstructionINSTA Dataset
PSNR28.41
14
Head Avatar ReconstructionINSTA dataset (test)
PSNR (bala)33.89
8
Head Avatar ReconstructionGaussianBlendShapes (test)
PSNR (Subject 1)35.08
8
Monocular 3D Head Avatar CreationNeRSemble
PSNR20.6
8
Head Avatar ReconstructionNerFace Dataset
PSNR27.13
7
Head Avatar ReconstructionPointAvatar Dataset
PSNR26.67
7
Head Avatar ReconstructionHDTF Dataset
PSNR26.72
7
Head Avatar Reconstruction and RenderingHead Avatar Reconstruction
Training Time (min)81
6
Cross-identity reenactment10 cross-identity reenactment video sequences (test)
AED9.2683
5
Cross-ReenactmentAva-256 held-out sequences (test)
CSIM0.657
4
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Code

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