DS1 spectrogram: FaceCLIPNeRF: Text-driven 3D Face Manipulation using Deformable Neural
  Radiance Fields

FaceCLIPNeRF: Text-driven 3D Face Manipulation using Deformable Neural Radiance Fields

July 21, 20232307.11418

Authors

Sungwon Hwang,Junha Hyung,Daejin Kim,Min-Jung Kim,Jaegul Choo

Abstract

As recent advances in Neural Radiance Fields (NeRF) have enabled high-fidelity 3D face reconstruction and novel view synthesis, its manipulation also became an essential task in 3D vision. However, existing manipulation methods require extensive human labor, such as a user-provided semantic mask and manual attribute search unsuitable for non-expert users.

Instead, our approach is designed to require a single text to manipulate a face reconstructed with NeRF. To do so, we first train a scene manipulator, a latent code-conditional deformable NeRF, over a dynamic scene to control a face deformation using the latent code.

However, representing a scene deformation with a single latent code is unfavorable for compositing local deformations observed in different instances. As so, our proposed Position-conditional Anchor Compositor (PAC) learns to represent a manipulated scene with spatially varying latent codes.

Their renderings with the scene manipulator are then optimized to yield high cosine similarity to a target text in CLIP embedding space for text-driven manipulation. To the best of our knowledge, our approach is the first to address the text-driven manipulation of a face reconstructed with NeRF.

Extensive results, comparisons, and ablation studies demonstrate the effectiveness of our approach.

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