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SemanticSplat: Feed-Forward 3D Scene Understanding with Language-Aware Gaussian Fields

11 June 2025
Qijing Li
Jingxiang Sun
Liang An
Zhaoqi Su
Hongwen Zhang
Yebin Liu
ArXiv (abs)PDFHTML
Main:8 Pages
8 Figures
Bibliography:3 Pages
6 Tables
Appendix:1 Pages
Abstract

Holistic 3D scene understanding, which jointly models geometry, appearance, and semantics, is crucial for applications like augmented reality and robotic interaction. Existing feed-forward 3D scene understanding methods (e.g., LSM) are limited to extracting language-based semantics from scenes, failing to achieve holistic scene comprehension. Additionally, they suffer from low-quality geometry reconstruction and noisy artifacts. In contrast, per-scene optimization methods rely on dense input views, which reduces practicality and increases complexity during deployment. In this paper, we propose SemanticSplat, a feed-forward semantic-aware 3D reconstruction method, which unifies 3D Gaussians with latent semantic attributes for joint geometry-appearance-semantics modeling. To predict the semantic anisotropic Gaussians, SemanticSplat fuses diverse feature fields (e.g., LSeg, SAM) with a cost volume representation that stores cross-view feature similarities, enhancing coherent and accurate scene comprehension. Leveraging a two-stage distillation framework, SemanticSplat reconstructs a holistic multi-modal semantic feature field from sparse-view images. Experiments demonstrate the effectiveness of our method for 3D scene understanding tasks like promptable and open-vocabulary segmentation. Video results are available atthis https URL.

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@article{li2025_2506.09565,
  title={ SemanticSplat: Feed-Forward 3D Scene Understanding with Language-Aware Gaussian Fields },
  author={ Qijing Li and Jingxiang Sun and Liang An and Zhaoqi Su and Hongwen Zhang and Yebin Liu },
  journal={arXiv preprint arXiv:2506.09565},
  year={ 2025 }
}
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