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arxiv: 2505.02388 · v1 · pith:ONCI2RLRnew · submitted 2025-05-05 · 💻 cs.CV · cs.AI· cs.LG· cs.RO

MetaScenes: Towards Automated Replica Creation for Real-world 3D Scans

classification 💻 cs.CV cs.AIcs.LGcs.RO
keywords metascenesreal-worldscenestransferartist-drivenautomateddesignshigh-quality
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Embodied AI (EAI) research requires high-quality, diverse 3D scenes to effectively support skill acquisition, sim-to-real transfer, and generalization. Achieving these quality standards, however, necessitates the precise replication of real-world object diversity. Existing datasets demonstrate that this process heavily relies on artist-driven designs, which demand substantial human effort and present significant scalability challenges. To scalably produce realistic and interactive 3D scenes, we first present MetaScenes, a large-scale, simulatable 3D scene dataset constructed from real-world scans, which includes 15366 objects spanning 831 fine-grained categories. Then, we introduce Scan2Sim, a robust multi-modal alignment model, which enables the automated, high-quality replacement of assets, thereby eliminating the reliance on artist-driven designs for scaling 3D scenes. We further propose two benchmarks to evaluate MetaScenes: a detailed scene synthesis task focused on small item layouts for robotic manipulation and a domain transfer task in vision-and-language navigation (VLN) to validate cross-domain transfer. Results confirm MetaScene's potential to enhance EAI by supporting more generalizable agent learning and sim-to-real applications, introducing new possibilities for EAI research. Project website: https://meta-scenes.github.io/.

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Cited by 3 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. ReScene: Structured Indoor Scene Reconstruction from Multi-View Captures

    cs.CV 2026-06 unverdicted novelty 5.0

    ReScene introduces HierView for view prioritization and Relation-Aware Assembly for scene graph fusion, reporting 17% lower Chamfer Distance and 26% lower LPIPS than prior baselines on ScanNet while running faster.

  2. Vision-Language Model Reasoning for Contextual Semantic Mapping in Intralogistics

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    A zero-shot pipeline using SLAM, SAM segmentation, clustering and VLM multi-view reasoning produces semantic maps with object class and movability labels, reporting 98.93% mIoU and 89.17% mAcc on intralogistics data.

  3. Vision-Language Model Reasoning for Contextual Semantic Mapping in Intralogistics

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    A pipeline combining SLAM, SAM, instance clustering, and VLM multi-view reasoning produces contextual semantic maps with 98.93% mIoU semantic accuracy and 89.17% mAcc movability estimation in intralogistics.