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Main Authors: Ko, ByungHa, Lee, Youngmin, Kim, Dong Hwan
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.11967
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author Ko, ByungHa
Lee, Youngmin
Kim, Dong Hwan
author_facet Ko, ByungHa
Lee, Youngmin
Kim, Dong Hwan
contents Hierarchical 3D grouping aims to recover scene groups across multiple granularities, from fine object parts to complete objects, without relying on semantic labels or a fixed vocabulary. The main challenge is to transform 2D foundation-model cues into coherent hierarchy supervision and embed that hierarchy in a 3D representation. We propose H2G, a hyperbolic affinity field for hierarchical 3D grouping. Our method derives semantically organized tree supervision by interpreting foundation-model affinities through Dasgupta's objective for similarity-based hierarchical clustering. This supervision is distilled into a single Lorentz hyperbolic feature field, whose geometry is well suited for tree-like branching structures. A hierarchy-aware objective aligns the field with fine-level assignments, coarse object structure, compact feature clusters, and LCA (Lowest Common Ancestor) ordering. This formulation represents multiple grouping levels in one feature space, enabling semantic hierarchical grouping grounded in 2D foundation-model knowledge.
format Preprint
id arxiv_https___arxiv_org_abs_2605_11967
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle H2G: Hierarchy-Aware Hyperbolic Grouping for 3D Scenes
Ko, ByungHa
Lee, Youngmin
Kim, Dong Hwan
Computer Vision and Pattern Recognition
Hierarchical 3D grouping aims to recover scene groups across multiple granularities, from fine object parts to complete objects, without relying on semantic labels or a fixed vocabulary. The main challenge is to transform 2D foundation-model cues into coherent hierarchy supervision and embed that hierarchy in a 3D representation. We propose H2G, a hyperbolic affinity field for hierarchical 3D grouping. Our method derives semantically organized tree supervision by interpreting foundation-model affinities through Dasgupta's objective for similarity-based hierarchical clustering. This supervision is distilled into a single Lorentz hyperbolic feature field, whose geometry is well suited for tree-like branching structures. A hierarchy-aware objective aligns the field with fine-level assignments, coarse object structure, compact feature clusters, and LCA (Lowest Common Ancestor) ordering. This formulation represents multiple grouping levels in one feature space, enabling semantic hierarchical grouping grounded in 2D foundation-model knowledge.
title H2G: Hierarchy-Aware Hyperbolic Grouping for 3D Scenes
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2605.11967