GaussianPainter: Painting Point Cloud into 3D Gaussians with Normal Guidance

Authors

  • Jingqiu Zhou Multimedia Laboratory The Chinese University of Hong Kong
  • Lue Fan Multimedia Laboratory The Chinese University of Hong Kong, Chinese Academy of Sciences, Centre for Perceptual and Interactive Intelligence
  • Xuesong Chen Multimedia Laboratory The Chinese University of Hong Kong
  • Linjiang Huang Beihang University
  • Si Liu Beihang University
  • Hongsheng Li Multimedia Laboratory The Chinese University of Hong Kong, Centre for Perceptual and Interactive Intelligence

DOI:

https://doi.org/10.1609/aaai.v39i10.33172

Abstract

In this paper, we present GaussianPainter, the first method to paint a point cloud into 3D Gaussians given a reference image. GaussianPainter introduces an innovative feed-forward approach to overcome the limitations of time-consuming test-time optimization in 3D Gaussian splatting. Our method addresses a critical challenge in the field: the non-uniqueness problem inherent in the large parameter space of 3D Gaussian splatting. This space, encompassing rotation, anisotropic scales, and spherical harmonic coefficients, introduces the challenge of rendering similar images from substantially different Gaussian fields. As a result, feed-forward networks face instability when attempting to directly predict high-quality Gaussian fields, struggling to converge on consistent parameters for a given output. To address this issue, we propose to estimate a surface normal for each point to determine its Gaussian rotation. This strategy enables the network to effectively predict the remaining Gaussian parameters in the constrained space. We further enhance our approach with an appearance injection module, incorporating reference image appearance into Gaussian fields via a multiscale triplane representation. Our method successfully balances efficiency and fidelity in 3D Gaussian generation, achieving high-quality, diverse, and robust 3D content creation from point clouds in a single forward pass. A video is provided in our supplementary material for a more detailed explanation of our method.

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Published

2025-04-11

How to Cite

Zhou, J., Fan, L., Chen, X., Huang, L., Liu, S., & Li, H. (2025). GaussianPainter: Painting Point Cloud into 3D Gaussians with Normal Guidance. Proceedings of the AAAI Conference on Artificial Intelligence, 39(10), 10788–10796. https://doi.org/10.1609/aaai.v39i10.33172

Issue

Section

AAAI Technical Track on Computer Vision IX