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arxiv: 2504.14151 · v1 · pith:PMILS75C · submitted 2025-04-19 · cs.CV · cs.AI· cs.RO

Locate 3D: Real-World Object Localization via Self-Supervised Learning in 3D

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classification cs.CV cs.AIcs.RO
keywords locatelearningself-supervisedcapabilitiesd-jepadatasetgeneralizationgrounding
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We present LOCATE 3D, a model for localizing objects in 3D scenes from referring expressions like "the small coffee table between the sofa and the lamp." LOCATE 3D sets a new state-of-the-art on standard referential grounding benchmarks and showcases robust generalization capabilities. Notably, LOCATE 3D operates directly on sensor observation streams (posed RGB-D frames), enabling real-world deployment on robots and AR devices. Key to our approach is 3D-JEPA, a novel self-supervised learning (SSL) algorithm applicable to sensor point clouds. It takes as input a 3D pointcloud featurized using 2D foundation models (CLIP, DINO). Subsequently, masked prediction in latent space is employed as a pretext task to aid the self-supervised learning of contextualized pointcloud features. Once trained, the 3D-JEPA encoder is finetuned alongside a language-conditioned decoder to jointly predict 3D masks and bounding boxes. Additionally, we introduce LOCATE 3D DATASET, a new dataset for 3D referential grounding, spanning multiple capture setups with over 130K annotations. This enables a systematic study of generalization capabilities as well as a stronger model.

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Cited by 3 Pith papers

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  1. Open-Vocabulary and Referring Segmentation for 3D Gaussians Using 2D Detectors

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    GaussDet enables open-vocabulary and referring segmentation in 3D Gaussians by learning instance features and aggregating votes from 2D detectors, improving referential grounding by 16.7% mIoU in zero-shot setting.

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    UniScene3D learns unified 3D scene representations from colored pointmaps using contrastive CLIP pretraining plus cross-view geometric and grounded view alignments, achieving state-of-the-art results on viewpoint grou...

  3. Memory Over Maps: 3D Object Localization Without Reconstruction

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