Fast 3D Stylized Gaussian Portrait Generation From a Single Image With Style Aligned Sampling Loss
Shangming Jiang,
Xinyou Yu,
Weijun Guo
et al.
Abstract:Creating stylized 3D avatars and portraits from just a single image input is an emerging challenge in augmented and virtual reality. While prior work has explored 2D stylization or 3D avatar generation, achieving high-fidelity 3D stylized portraits with text control remains an open problem. In this paper, we present an efficient approach for generating high-quality 3D stylized portraits directly from a single input image. Our core representations are based on 3D Gaussian Splatting for efficient rendering, alon… Show more
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