ROAICVFeb 18

Articulated 3D Scene Graphs for Open-World Mobile Manipulation

arXiv:2602.16356v12 citationsh-index: 16
Originality Highly original
AI Analysis

This addresses the limitation of robots in open-world environments by enabling them to interact with articulated objects, which is incremental as it builds on existing semantics and geometry approaches.

The paper tackles the problem of robots anticipating object motion for long-horizon mobile manipulation by introducing MoMa-SG, a framework that builds semantic-kinematic 3D scene graphs from RGB-D sequences, resulting in robust manipulation of articulated objects in real-world home environments as demonstrated on a quadruped and mobile manipulator.

Semantics has enabled 3D scene understanding and affordance-driven object interaction. However, robots operating in real-world environments face a critical limitation: they cannot anticipate how objects move. Long-horizon mobile manipulation requires closing the gap between semantics, geometry, and kinematics. In this work, we present MoMa-SG, a novel framework for building semantic-kinematic 3D scene graphs of articulated scenes containing a myriad of interactable objects. Given RGB-D sequences containing multiple object articulations, we temporally segment object interactions and infer object motion using occlusion-robust point tracking. We then lift point trajectories into 3D and estimate articulation models using a novel unified twist estimation formulation that robustly estimates revolute and prismatic joint parameters in a single optimization pass. Next, we associate objects with estimated articulations and detect contained objects by reasoning over parent-child relations at identified opening states. We also introduce the novel Arti4D-Semantic dataset, which uniquely combines hierarchical object semantics including parent-child relation labels with object axis annotations across 62 in-the-wild RGB-D sequences containing 600 object interactions and three distinct observation paradigms. We extensively evaluate the performance of MoMa-SG on two datasets and ablate key design choices of our approach. In addition, real-world experiments on both a quadruped and a mobile manipulator demonstrate that our semantic-kinematic scene graphs enable robust manipulation of articulated objects in everyday home environments. We provide code and data at: https://momasg.cs.uni-freiburg.de.

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