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📄 Abstract
Abstract: Modeling the inherent hierarchical structure of 3D objects and 3D scenes is
highly desirable, as it enables a more holistic understanding of environments
for autonomous agents. Accomplishing this with implicit representations, such
as Neural Radiance Fields, remains an unexplored challenge. Existing methods
that explicitly model hierarchical structures often face significant
limitations: they either require multiple rendering passes to capture
embeddings at different levels of granularity, significantly increasing
inference time, or rely on predefined, closed-set discrete hierarchies that
generalize poorly to the diverse and nuanced structures encountered by agents
in the real world. To address these challenges, we propose OpenHype, a novel
approach that represents scene hierarchies using a continuous hyperbolic latent
space. By leveraging the properties of hyperbolic geometry, OpenHype naturally
encodes multi-scale relationships and enables smooth traversal of hierarchies
through geodesic paths in latent space. Our method outperforms state-of-the-art
approaches on standard benchmarks, demonstrating superior efficiency and
adaptability in 3D scene understanding.
Authors (5)
Lisa Weijler
Sebastian Koch
Fabio Poiesi
Timo Ropinski
Pedro Hermosilla
Submitted
October 24, 2025
NeurIPS 2025
Key Contributions
OpenHype represents scene hierarchies using a continuous hyperbolic latent space, overcoming limitations of discrete hierarchies and multiple rendering passes. It leverages hyperbolic geometry to naturally encode multi-scale relationships, enabling smooth hierarchy traversal for better scene understanding by autonomous agents.
Business Value
Enables more sophisticated scene understanding for robots and autonomous systems, leading to improved navigation, interaction, and decision-making in complex environments.