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Main Authors: Valverde, Alexander, Xu, Brian, Zhou, Yuyin, Xu, Meng, Wang, Hongyun
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.14270
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author Valverde, Alexander
Xu, Brian
Zhou, Yuyin
Xu, Meng
Wang, Hongyun
author_facet Valverde, Alexander
Xu, Brian
Zhou, Yuyin
Xu, Meng
Wang, Hongyun
contents Scene reconstruction has emerged as a central challenge in computer vision, with approaches such as Neural Radiance Fields (NeRF) and Gaussian Splatting achieving remarkable progress. While Gaussian Splatting demonstrates strong performance on large-scale datasets, it often struggles to capture fine details or maintain realism in regions with sparse coverage, largely due to the inherent limitations of sparse 3D training data. In this work, we propose GauSSmart, a hybrid method that effectively bridges 2D foundational models and 3D Gaussian Splatting reconstruction. Our approach integrates established 2D computer vision techniques, including convex filtering and semantic feature supervision from foundational models such as DINO, to enhance Gaussian-based scene reconstruction. By leveraging 2D segmentation priors and high-dimensional feature embeddings, our method guides the densification and refinement of Gaussian splats, improving coverage in underrepresented areas and preserving intricate structural details. We validate our approach across three datasets, where GauSSmart consistently outperforms existing Gaussian Splatting in the majority of evaluated scenes. Our results demonstrate the significant potential of hybrid 2D-3D approaches, highlighting how the thoughtful combination of 2D foundational models with 3D reconstruction pipelines can overcome the limitations inherent in either approach alone.
format Preprint
id arxiv_https___arxiv_org_abs_2510_14270
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle GauSSmart: Enhanced 3D Reconstruction through 2D Foundation Models and Geometric Filtering
Valverde, Alexander
Xu, Brian
Zhou, Yuyin
Xu, Meng
Wang, Hongyun
Computer Vision and Pattern Recognition
Graphics
Scene reconstruction has emerged as a central challenge in computer vision, with approaches such as Neural Radiance Fields (NeRF) and Gaussian Splatting achieving remarkable progress. While Gaussian Splatting demonstrates strong performance on large-scale datasets, it often struggles to capture fine details or maintain realism in regions with sparse coverage, largely due to the inherent limitations of sparse 3D training data. In this work, we propose GauSSmart, a hybrid method that effectively bridges 2D foundational models and 3D Gaussian Splatting reconstruction. Our approach integrates established 2D computer vision techniques, including convex filtering and semantic feature supervision from foundational models such as DINO, to enhance Gaussian-based scene reconstruction. By leveraging 2D segmentation priors and high-dimensional feature embeddings, our method guides the densification and refinement of Gaussian splats, improving coverage in underrepresented areas and preserving intricate structural details. We validate our approach across three datasets, where GauSSmart consistently outperforms existing Gaussian Splatting in the majority of evaluated scenes. Our results demonstrate the significant potential of hybrid 2D-3D approaches, highlighting how the thoughtful combination of 2D foundational models with 3D reconstruction pipelines can overcome the limitations inherent in either approach alone.
title GauSSmart: Enhanced 3D Reconstruction through 2D Foundation Models and Geometric Filtering
topic Computer Vision and Pattern Recognition
Graphics
url https://arxiv.org/abs/2510.14270