Papers
arxiv:2604.04787

AvatarPointillist: AutoRegressive 4D Gaussian Avatarization

Published on Apr 6
· Submitted by
Hongyu LIU
on Apr 7
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Abstract

AvatarPointillist generates dynamic 4D Gaussian avatars using a decoder-only Transformer that autoregressively constructs point clouds with adaptive density and binding information for realistic animation.

AI-generated summary

We introduce AvatarPointillist, a novel framework for generating dynamic 4D Gaussian avatars from a single portrait image. At the core of our method is a decoder-only Transformer that autoregressively generates a point cloud for 3D Gaussian Splatting. This sequential approach allows for precise, adaptive construction, dynamically adjusting point density and the total number of points based on the subject's complexity. During point generation, the AR model also jointly predicts per-point binding information, enabling realistic animation. After generation, a dedicated Gaussian decoder converts the points into complete, renderable Gaussian attributes. We demonstrate that conditioning the decoder on the latent features from the AR generator enables effective interaction between stages and markedly improves fidelity. Extensive experiments validate that AvatarPointillist produces high-quality, photorealistic, and controllable avatars. We believe this autoregressive formulation represents a new paradigm for avatar generation, and we will release our code inspire future research.

Community

Paper submitter

Accepted by the CVPR 2026 main conference. An autoregressive framework for generating dynamic 4D Gaussian avatars from a single portrait image.

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