Large-scale pre-trained vision-language models allow for the zero-shot
text-based generation of 3D avatars. The previous state-of-the-art method
utilized CLIP to supervise neural implicit models that reconstructed a human
body mesh. However, this approach has two limitations. Firstly, the lack of
avatar-specific models can cause facial distortion and unrealistic clothing in
the generated avatars. Secondly, CLIP only provides optimization direction for
the overall appearance, resulting in less impressive results. To address these
limitations, we propose AvatarFusion, the first framework to use a latent
diffusion model to provide pixel-level guidance for generating human-realistic
avatars while simultaneously segmenting clothing from the avatar's body.
AvatarFusion includes the first clothing-decoupled neural implicit avatar model
that employs a novel Dual Volume Rendering strategy to render the decoupled
skin and clothing sub-models in one space. We also introduce a novel
optimization method, called Pixel-Semantics Difference-Sampling (PS-DS), which
semantically separates the generation of body and clothes, and generates a
variety of clothing styles. Moreover, we establish the first benchmark for
zero-shot text-to-avatar generation. Our experimental results demonstrate that
our framework outperforms previous approaches, with significant improvements
observed in all metrics. Additionally, since our model is clothing-decoupled,
we can exchange the clothes of avatars. Code will be available on Github