EntON: Eigenentropy-Optimized Neighborhood Densification in 3D Gaussian Splatting
Miriam J\"ager, Boris Jutzi

TL;DR
EntON introduces a geometry-aware densification method for 3D Gaussian Splatting that enhances geometric accuracy and rendering quality while reducing scene complexity and training time.
Contribution
The paper proposes Eigenentropy-optimized neighborhood densification (EntON), a novel approach that adaptively refines 3D Gaussian representations based on local structural order.
Findings
Improves geometric accuracy by up to 33%.
Enhances rendering quality by up to 7%.
Reduces the number of Gaussians by up to 50% and training time by up to 23%.
Abstract
We present a novel Eigenentropy-optimized neighboorhood densification strategy EntON in 3D Gaussian Splatting (3DGS) for geometrically accurate and high-quality rendered 3D reconstruction. While standard 3DGS produces Gaussians whose centers and surfaces are poorly aligned with the underlying object geometry, surface-focused reconstruction methods frequently sacrifice photometric accuracy. In contrast to the conventional densification strategy, which relies on the magnitude of the view-space position gradient, our approach introduces a geometry-aware strategy to guide adaptive splitting and pruning. Specifically, we compute the 3D shape feature Eigenentropy from the eigenvalues of the covariance matrix in the k-nearest neighborhood of each Gaussian center, which quantifies the local structural order. These Eigenentropy values are integrated into an alternating optimization framework:…
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Taxonomy
Topics3D Shape Modeling and Analysis · Computer Graphics and Visualization Techniques · Advanced Vision and Imaging
