Revisiting Photometric Ambiguity for Accurate Gaussian-Splatting Surface Reconstruction
Jiahe Li, Jiawei Zhang, Xiao Bai, Jin Zheng, Xiaohan Yu + 2 more
TLDR
AmbiSuR improves Gaussian Splatting surface reconstruction by addressing photometric ambiguities with a novel disambiguation and self-indication module.
Key contributions
- AmbiSuR framework enhances Gaussian Splatting for robust 3D surface reconstruction.
- Identifies and addresses two intrinsic photometric ambiguities in Gaussian Splatting.
- Introduces a photometric disambiguation to constrain ill-posed geometry solutions.
- Proposes an ambiguity indication module for self-correcting underconstrained reconstructions.
Why it matters
Photometric ambiguities severely limit current differentiable rendering methods for surface reconstruction. This paper offers an intrinsic solution within Gaussian Splatting, overcoming these bottlenecks. The result is superior, more accurate, and broadly compatible 3D surface reconstructions.
Original Abstract
Surface reconstruction with differentiable rendering has achieved impressive performance in recent years, yet the pervasive photometric ambiguities have strictly bottlenecked existing approaches. This paper presents AmbiSuR, a framework that explores an intrinsic solution upon Gaussian Splatting for the photometric ambiguity-robust surface 3D reconstruction with high performance. Starting by revisiting the foundation, our investigation uncovers two built-in primitive-wise ambiguities in representation, while revealing an intrinsic potential for ambiguity self-indication in Gaussian Splatting. Stemming from these, a photometric disambiguation is first introduced, constraining ill-posed geometry solution for definite surface formation. Then, we propose an ambiguity indication module that unleashes the self-indication potential to identify and further guide correcting underconstrained reconstructions. Extensive experiments demonstrate our superior surface reconstructions compared to existing methods across various challenging scenarios, excelling in broad compatibility. Project: https://fictionarry.github.io/AmbiSuR-Proj/ .
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