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FeatureGS: Eigenvalue-Feature Optimization in 3D Gaussian Splatting for Geometrically Accurate and Artifact-Reduced Reconstruction

About

3D Gaussian Splatting (3DGS) has emerged as a powerful approach for 3D scene reconstruction using 3D Gaussians. However, neither the centers nor surfaces of the Gaussians are accurately aligned to the object surface, complicating their direct use in point cloud and mesh reconstruction. Additionally, 3DGS typically produces floater artifacts, increasing the number of Gaussians and storage requirements. To address these issues, we present FeatureGS, which incorporates an additional geometric loss term based on an eigenvalue-derived 3D shape feature into the optimization process of 3DGS. The goal is to improve geometric accuracy and enhance properties of planar surfaces with reduced structural entropy in local 3D neighborhoods.We present four alternative formulations for the geometric loss term based on 'planarity' of Gaussians, as well as 'planarity', 'omnivariance', and 'eigenentropy' of Gaussian neighborhoods. We provide quantitative and qualitative evaluations on 15 scenes of the DTU benchmark dataset focusing on following key aspects: Geometric accuracy and artifact-reduction, measured by the Chamfer distance, and memory efficiency, evaluated by the total number of Gaussians. Additionally, rendering quality is monitored by Peak Signal-to-Noise Ratio. FeatureGS achieves a 30 % improvement in geometric accuracy, reduces the number of Gaussians by 90 %, and suppresses floater artifacts, while maintaining comparable photometric rendering quality. The geometric loss with 'planarity' from Gaussians provides the highest geometric accuracy, while 'omnivariance' in Gaussian neighborhoods reduces floater artifacts and number of Gaussians the most. This makes FeatureGS a strong method for geometrically accurate, artifact-reduced and memory-efficient 3D scene reconstruction, enabling the direct use of Gaussian centers for geometric representation.

Miriam J\"ager, Markus Hillemann, Boris Jutzi• 2025

Related benchmarks

TaskDatasetResultRank
Surface ReconstructionDTU
Chamfer Distance (CD)0.854
200
3D ReconstructionDTU (test)
Total Number of Gaussians40
96
Geometric AccuracyDTU (all points)
Chamfer Distance (mm)3.058
80
Novel View SynthesisDTU Scan37
PSNR26.39
9
Rendering QualityDTU Scan24
PSNR29.98
5
Rendering QualityDTU Scan40
PSNR28.56
5
Rendering QualityDTU (Scan55)
PSNR29.56
5
Rendering QualityDTU (Scan63)
PSNR32.81
5
Rendering QualityDTU scan65
PSNR30.36
5
Rendering QualityDTU scan69
PSNR28.57
5
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