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arxiv:2509.16423

3D Gaussian Flats: Hybrid 2D/3D Photometric Scene Reconstruction

Published on Sep 19
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Abstract

A hybrid 2D/3D representation method enhances depth estimation and mesh extraction for realistic digital twins, addressing challenges with flat surfaces and improving visual fidelity and geometric accuracy.

AI-generated summary

Recent advances in radiance fields and novel view synthesis enable creation of realistic digital twins from photographs. However, current methods struggle with flat, texture-less surfaces, creating uneven and semi-transparent reconstructions, due to an ill-conditioned photometric reconstruction objective. Surface reconstruction methods solve this issue but sacrifice visual quality. We propose a novel hybrid 2D/3D representation that jointly optimizes constrained planar (2D) Gaussians for modeling flat surfaces and freeform (3D) Gaussians for the rest of the scene. Our end-to-end approach dynamically detects and refines planar regions, improving both visual fidelity and geometric accuracy. It achieves state-of-the-art depth estimation on ScanNet++ and ScanNetv2, and excels at mesh extraction without overfitting to a specific camera model, showing its effectiveness in producing high-quality reconstruction of indoor scenes.

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