CoARF: Controllable 3D Artistic Style Transfer for Radiance Fields

In this paper, we introduce Controllable Artistic Radiance Fields (CoARF), a novel algorithm for controllable 3D scene stylization. CoARF enables style transfer for specified objects, compositional 3D style transfer, and semantic-aware style transfer.

March 18, 2024

3D International Conference on 3D Vision (3DV) (2024)

 

Authors

Deheng Zhang (ETH Zurich)

Clara Fernandez-Labrador (DisneyResearch|Studios/ETH Zurich)

Christopher Schroers  (DisneyResearch|Studios)

CoARF: Controllable 3D Artistic Style Transfer for Radiance Fields

Abstract

Creating artistic 3D scenes can be time-consuming and requires specialized knowledge. To address this, recent works such as ARF [57], use a radiance field-based approach with style constraints to generate 3D scenes that resemble a style image provided by the user. However, these methods lack fine-grained control over the resulting scenes. In this paper, we introduce Controllable Artistic Radiance Fields (CoARF), a novel algorithm for controllable 3D scene stylization. CoARF enables style transfer for specified objects, compositional 3D style transfer, and semantic-aware style transfer. We achieve controllability using segmentation masks with different label-dependent loss functions. We also propose a semantic-aware nearest neighbor matching algorithm to improve the style transfer quality. Our extensive experiments demonstrate that CoARF provides user-specified controllability of style transfer and superior style transfer quality with more precise feature matching.

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