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Open-Vocabulary Functional 3D Scene Graphs for Real-World Indoor Spaces

24 March 2025
Chenyangguang Zhang
Alexandros Delitzas
Fangjinhua Wang
Ruida Zhang
Xiangyang Ji
Marc Pollefeys
Francis Engelmann
    3DV
    3DPC
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Abstract

We introduce the task of predicting functional 3D scene graphs for real-world indoor environments from posed RGB-D images. Unlike traditional 3D scene graphs that focus on spatial relationships of objects, functional 3D scene graphs capture objects, interactive elements, and their functional relationships. Due to the lack of training data, we leverage foundation models, including visual language models (VLMs) and large language models (LLMs), to encode functional knowledge. We evaluate our approach on an extended SceneFun3D dataset and a newly collected dataset, FunGraph3D, both annotated with functional 3D scene graphs. Our method significantly outperforms adapted baselines, including Open3DSG and ConceptGraph, demonstrating its effectiveness in modeling complex scene functionalities. We also demonstrate downstream applications such as 3D question answering and robotic manipulation using functional 3D scene graphs. See our project page atthis https URL

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@article{zhang2025_2503.19199,
  title={ Open-Vocabulary Functional 3D Scene Graphs for Real-World Indoor Spaces },
  author={ Chenyangguang Zhang and Alexandros Delitzas and Fangjinhua Wang and Ruida Zhang and Xiangyang Ji and Marc Pollefeys and Francis Engelmann },
  journal={arXiv preprint arXiv:2503.19199},
  year={ 2025 }
}
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