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ConceptFusion: Open-set Multimodal 3D Mapping

Authors :
Jatavallabhula, Krishna Murthy
Kuwajerwala, Alihusein
Gu, Qiao
Omama, Mohd
Chen, Tao
Maalouf, Alaa
Li, Shuang
Iyer, Ganesh
Saryazdi, Soroush
Keetha, Nikhil
Tewari, Ayush
Tenenbaum, Joshua B.
de Melo, Celso Miguel
Krishna, Madhava
Paull, Liam
Shkurti, Florian
Torralba, Antonio
Publication Year :
2023

Abstract

Building 3D maps of the environment is central to robot navigation, planning, and interaction with objects in a scene. Most existing approaches that integrate semantic concepts with 3D maps largely remain confined to the closed-set setting: they can only reason about a finite set of concepts, pre-defined at training time. Further, these maps can only be queried using class labels, or in recent work, using text prompts. We address both these issues with ConceptFusion, a scene representation that is (1) fundamentally open-set, enabling reasoning beyond a closed set of concepts and (ii) inherently multimodal, enabling a diverse range of possible queries to the 3D map, from language, to images, to audio, to 3D geometry, all working in concert. ConceptFusion leverages the open-set capabilities of today's foundation models pre-trained on internet-scale data to reason about concepts across modalities such as natural language, images, and audio. We demonstrate that pixel-aligned open-set features can be fused into 3D maps via traditional SLAM and multi-view fusion approaches. This enables effective zero-shot spatial reasoning, not needing any additional training or finetuning, and retains long-tailed concepts better than supervised approaches, outperforming them by more than 40% margin on 3D IoU. We extensively evaluate ConceptFusion on a number of real-world datasets, simulated home environments, a real-world tabletop manipulation task, and an autonomous driving platform. We showcase new avenues for blending foundation models with 3D open-set multimodal mapping. For more information, visit our project page https://concept-fusion.github.io or watch our 5-minute explainer video https://www.youtube.com/watch?v=rkXgws8fiDs<br />Comment: RSS 2023. Project page: https://concept-fusion.github.io Explainer video: https://www.youtube.com/watch?v=rkXgws8fiDs Code: https://github.com/concept-fusion/concept-fusion

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2302.07241
Document Type :
Working Paper