Group3D: MLLM-Driven Semantic Grouping for Open-Vocabulary 3D Object Detection
Youbin Kim, Jinho Park, Hogun Park, Eunbyung Park

TL;DR
Group3D introduces a novel multi-view 3D object detection framework that integrates semantic constraints from a multimodal large language model to improve open-vocabulary detection accuracy and robustness.
Contribution
It uniquely incorporates semantic compatibility groups into the instance merging process, reducing over-merging and fragmentation in open-vocabulary 3D detection.
Findings
Achieves state-of-the-art results on ScanNet and ARKitScenes datasets.
Demonstrates strong zero-shot generalization capabilities.
Supports both pose-known and pose-free settings.
Abstract
Open-vocabulary 3D object detection aims to localize and recognize objects beyond a fixed training taxonomy. In multi-view RGB settings, recent approaches often decouple geometry-based instance construction from semantic labeling, generating class-agnostic fragments and assigning open-vocabulary categories post hoc. While flexible, such decoupling leaves instance construction governed primarily by geometric consistency, without semantic constraints during merging. When geometric evidence is view-dependent and incomplete, this geometry-only merging can lead to irreversible association errors, including over-merging of distinct objects or fragmentation of a single instance. We propose Group3D, a multi-view open-vocabulary 3D detection framework that integrates semantic constraints directly into the instance construction process. Group3D maintains a scene-adaptive vocabulary derived from a…
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Taxonomy
TopicsAdvanced Neural Network Applications · Multimodal Machine Learning Applications · Robot Manipulation and Learning
