Gaussian Entropy Fields: Driving Adaptive Sparsity in 3D Gaussian Optimization
By: Hong Kuang, Jianchen Liu
Potential Business Impact:
Makes 3D pictures look more real and detailed.
3D Gaussian Splatting (3DGS) has emerged as a leading technique for novel view synthesis, demonstrating exceptional rendering efficiency. \replaced[]{Well-reconstructed surfaces can be characterized by low configurational entropy, where dominant primitives clearly define surface geometry while redundant components are suppressed.}{The key insight is that well-reconstructed surfaces naturally exhibit low configurational entropy, where dominant primitives clearly define surface geometry while suppressing redundant components.} Three complementary technical contributions are introduced: (1) entropy-driven surface modeling via entropy minimization for low configurational entropy in primitive distributions; (2) adaptive spatial regularization using the Surface Neighborhood Redundancy Index (SNRI) and image entropy-guided weighting; (3) multi-scale geometric preservation through competitive cross-scale entropy alignment. Extensive experiments demonstrate that GEF achieves competitive geometric precision on DTU and T\&T benchmarks, while delivering superior rendering quality compared to existing methods on Mip-NeRF 360. Notably, superior Chamfer Distance (0.64) on DTU and F1 score (0.44) on T\&T are obtained, alongside the best SSIM (0.855) and LPIPS (0.136) among baselines on Mip-NeRF 360, validating the framework's ability to enhance surface reconstruction accuracy without compromising photometric fidelity.
Similar Papers
EntropyGS: An Efficient Entropy Coding on 3D Gaussian Splatting
CV and Pattern Recognition
Makes 3D pictures smaller for faster sharing.
Gradient-Driven Natural Selection for Compact 3D Gaussian Splatting
CV and Pattern Recognition
Makes 3D pictures smaller without losing detail.
SparseSurf: Sparse-View 3D Gaussian Splatting for Surface Reconstruction
CV and Pattern Recognition
Builds better 3D worlds from fewer pictures.