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Variational free complement method with Gaussian-expanded complement functions: convergence with fixed Gaussian expansion length
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Geometry Gaussians: Decoupling Appearance and Geometry in Gaussian Splatting
Announce Type: new Abstract: After the success of 3D Gaussian Splatting (3DGS) for novel view synthesis, many works have explored how to also use it for geometric surface representation. However, extracting accurate geometric information directly from 3DGS remains challenging and can often reduce the appearance rendering quality. In this work, we show that 3DGS in its default form is inheritedly unsuited to represent texture and geometry at the same time, by training with complete...
Gaussian Point Splatting
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Functional uniqueness and stability of Gaussian priors in optimal L1 estimation
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Learning Global Motion with Compact Gaussians for Feed-Forward 4D Reconstruction
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Characterization of Gaussian Universality Breakdown in High-Dimensional Empirical Risk Minimization
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