Hi-Dyna Graph: Hierarchical Dynamic Scene Graph for Robotic Autonomy in Human-Centric Environments
Jiawei Hou, Xiangyang Xue, Taiping Zeng

TL;DR
Hi-Dyna Graph introduces a hierarchical dynamic scene graph architecture that combines global static layouts with localized dynamic semantics to enhance robotic scene understanding and autonomy in human-centric environments.
Contribution
The paper presents a novel hierarchical scene graph framework that integrates global topological maps with dynamic subgraphs, enabling real-time environment modeling and task execution for robots.
Findings
Superior scene representation effectiveness demonstrated.
Real-world deployment shows autonomous task completion.
No additional training needed for dynamic scene adaptation.
Abstract
Autonomous operation of service robotics in human-centric scenes remains challenging due to the need for understanding of changing environments and context-aware decision-making. While existing approaches like topological maps offer efficient spatial priors, they fail to model transient object relationships, whereas dense neural representations (e.g., NeRF) incur prohibitive computational costs. Inspired by the hierarchical scene representation and video scene graph generation works, we propose Hi-Dyna Graph, a hierarchical dynamic scene graph architecture that integrates persistent global layouts with localized dynamic semantics for embodied robotic autonomy. Our framework constructs a global topological graph from posed RGB-D inputs, encoding room-scale connectivity and large static objects (e.g., furniture), while environmental and egocentric cameras populate dynamic subgraphs with…
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Taxonomy
TopicsReinforcement Learning in Robotics
Methodstravel james
