DOC-GS: Dual-Domain Observation and Calibration for Reliable Sparse-View Gaussian Splatting
Hantang Li, Qiang Zhu, Xiandong Meng, Debin Zhao, Xiaopeng Fan

TL;DR
This paper introduces DOC-GS, a unified framework for improving sparse-view 3D Gaussian Splatting by modeling and calibrating Gaussian reliability through optimization and observation domains.
Contribution
It proposes a dual-domain approach that uses depth-guided dropout and atmospheric scattering cues to enhance the reliability and quality of 3D Gaussian reconstructions.
Findings
Improved stability and reduced artifacts in sparse-view 3D Gaussian Splatting.
Effective identification and removal of unreliable Gaussians using the proposed methods.
Enhanced structural consistency in reconstructed 3D scenes.
Abstract
Sparse-view reconstruction with 3D Gaussian Splatting (3DGS) is fundamentally ill-posed due to insufficient geometric supervision, often leading to severe overfitting and the emergence of structural distortions and translucent haze-like artifacts. While existing approaches attempt to alleviate this issue via dropout-based regularization, they are largely heuristic and lack a unified understanding of artifact formation. In this paper, we revisit sparse-view 3DGS reconstruction from a new perspective and identify the core challenge as the unobservability of Gaussian primitive reliability. Unreliable Gaussians are insufficiently constrained during optimization and accumulate as haze-like degradations in rendered images. Motivated by this observation, we propose a unified Dual-domain Observation and Calibration (DOC-GS) framework that models and corrects Gaussian reliability through the…
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