DreamBeast: Distilling 3D Fantastical Animals with Part-Aware Knowledge Transfer
- URL: http://arxiv.org/abs/2409.08271v1
- Date: Thu, 12 Sep 2024 17:58:31 GMT
- Title: DreamBeast: Distilling 3D Fantastical Animals with Part-Aware Knowledge Transfer
- Authors: Runjia Li, Junlin Han, Luke Melas-Kyriazi, Chunyi Sun, Zhaochong An, Zhongrui Gui, Shuyang Sun, Philip Torr, Tomas Jakab,
- Abstract summary: We present DreamBeast, a novel method for generating 3D animal assets composed of distinct parts.
For each generated asset, we efficiently extract part-level knowledge from the Stable Diffusion 3 model.
We then use to modulate the guidance of a multi-view diffusion model during SDS to create 3D assets of fantastical animals.
- Score: 26.36250599941058
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We present DreamBeast, a novel method based on score distillation sampling (SDS) for generating fantastical 3D animal assets composed of distinct parts. Existing SDS methods often struggle with this generation task due to a limited understanding of part-level semantics in text-to-image diffusion models. While recent diffusion models, such as Stable Diffusion 3, demonstrate a better part-level understanding, they are prohibitively slow and exhibit other common problems associated with single-view diffusion models. DreamBeast overcomes this limitation through a novel part-aware knowledge transfer mechanism. For each generated asset, we efficiently extract part-level knowledge from the Stable Diffusion 3 model into a 3D Part-Affinity implicit representation. This enables us to instantly generate Part-Affinity maps from arbitrary camera views, which we then use to modulate the guidance of a multi-view diffusion model during SDS to create 3D assets of fantastical animals. DreamBeast significantly enhances the quality of generated 3D creatures with user-specified part compositions while reducing computational overhead, as demonstrated by extensive quantitative and qualitative evaluations.
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