Dr. Splat: Directly Referring 3D Gaussian Splatting via Direct Language Embedding Registration

1Dept. of Electrical Engineering, POSTECH, 2Grad. School of AI, POSTECH, 3NVIDIA, Taiwan, 4School of Computing, KAIST
denotes corresponding authors
CVPR 2025 Highlight

Abstract

We introduce Dr. Splat, a novel approach for open vocabulary 3D scene understanding leveraging 3D Gaussian Splatting. Unlike existing language-embedded 3DGS methods, which rely on a rendering process, our method directly associates language-aligned CLIP embeddings with 3D Gaussians for holistic 3D scene understanding. The key of our method is a language feature registration technique where CLIP embeddings are assigned to the dominant Gaussians intersected by each pixel-ray. Moreover, we integrate Product Quantization (PQ) trained on general large scale image data to compactly represent embeddings without per-scene optimization. Experiments demonstrate that our approach significantly outperforms existing approaches in 3D perception benchmarks, such as open-vocabulary 3D semantic segmentation, 3D object localization, and 3D object selection tasks.

Dr. Splat

Image Dr. Splat directly associates CLIP embeddings with 3D Gaussians for open-vocabulary 3D scene understanding, achieving state-of-the-art 3D perception without rendering.

3D object selection

Image

3D object localization

Image
Image

3D semantic segmentation

Image

Large scene results

BibTeX


    @inproceedings{drsplat25,
        title={Dr. Splat: Directly Referring 3D Gaussian Splatting via Direct Language Embedding Registration},
        author={Jun-Seong, Kim and Kim GeonU and Yu-Ji, Kim and Yu-Chiang Frank Wang and Jaesung Choe and Oh, Tae-Hyun},
        booktitle=CVPR,
        year={2025}
    }
    

Acknowledgement

We thank the members of AMILab and NVIDIA Taiwan for their helpful discussions and proofreading.

This work was supported by Institute of Information & communications Technology Planning & Evaluation (IITP) (No.RS-2021-II212068, Artificial Intelligence Innovation Hub, No.RS-2024-00457882, National AI Research Lab Project, No.RS-2023-00225630, Development of Artificial Intelligence for Text-based 3D Movie Generation, No.RS- 2019-II191906, Artificial Intelligence Graduate School Pro- gram(POSTECH)) and by the National Research Foundation of Korea (NRF) (No.RS-2024-00358135, Corner Vision: Learning to Look Around the Corner through Multi-modal Signals) grant funded by the Korea government (MSIT).

This website is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License. This means you are free to borrow the source code of this website, we just ask that you link back to the original page in the footer.