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SuperGaussians: Enhancing Gaussian Splatting Using Primitives with Spatially Varying Colors

28 November 2024
Rui-Xue Xu
Wenyue Chen
Jiepeng Wang
Yuan Liu
Peng Wang
Lin Gao
Shiqing Xin
Taku Komura
Xin Li
Wenping Wang
ArXiv (abs)PDFHTML
Abstract

Gaussian Splattings demonstrate impressive results in multi-view reconstruction based on Gaussian explicit representations. However, the current Gaussian primitives only have a single view-dependent color and an opacity to represent the appearance and geometry of the scene, resulting in a non-compact representation. In this paper, we introduce a new method called SuperGaussians that utilizes spatially varying colors and opacity in a single Gaussian primitive to improve its representation ability. We have implemented bilinear interpolation, movable kernels, and even tiny neural networks as spatially varying functions. Quantitative and qualitative experimental results demonstrate that all three functions outperform the baseline, with the best movable kernels achieving superior novel view synthesis performance on multiple datasets, highlighting the strong potential of spatially varying functions.

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