FindAnything: Open-Vocabulary and Object-Centric Mapping for Robot Exploration in Any Environment
FindAnything: Open-Vocabulary and Object-Centric Mapping for Robot Exploration in Any Environment
Geometrically accurate and semantically expressive map representations have proven invaluable to facilitate robust and safe mobile robot navigation and task planning. Nevertheless, real-time, open-vocabulary semantic understanding of large-scale unknown environments is still an open problem. In this paper we present FindAnything, an open-world mapping and exploration framework that incorporates vision-language information into dense volumetric submaps. Thanks to the use of vision-language features, FindAnything bridges the gap between pure geometric and open-vocabulary semantic information for a higher level of understanding while allowing to explore any environment without the help of any external source of ground-truth pose information. We represent the environment as a series of volumetric occupancy submaps, resulting in a robust and accurate map representation that deforms upon pose updates when the underlying SLAM system corrects its drift, allowing for a locally consistent representation between submaps. Pixel-wise vision-language features are aggregated from efficient SAM (eSAM)-generated segments, which are in turn integrated into object-centric volumetric submaps, providing a mapping from open-vocabulary queries to 3D geometry that is scalable also in terms of memory usage. The open-vocabulary map representation of FindAnything achieves state-of-the-art semantic accuracy in closed-set evaluations on the Replica dataset. This level of scene understanding allows a robot to explore environments based on objects or areas of interest selected via natural language queries. Our system is the first of its kind to be deployed on resource-constrained devices, such as MAVs, leveraging vision-language information for real-world robotic tasks.
Sebastián Barbas Laina、Simon Boche、Sotiris Papatheodorou、Simon Schaefer、Jaehyung Jung、Stefan Leutenegger
自动化技术、自动化技术设备计算技术、计算机技术
Sebastián Barbas Laina,Simon Boche,Sotiris Papatheodorou,Simon Schaefer,Jaehyung Jung,Stefan Leutenegger.FindAnything: Open-Vocabulary and Object-Centric Mapping for Robot Exploration in Any Environment[EB/OL].(2025-04-11)[2025-06-27].https://arxiv.org/abs/2504.08603.点此复制
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