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Main Authors: Wang, Peng, Pham, Minh Huy, Guo, Zhihao, Zhou, Wei
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.12525
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author Wang, Peng
Pham, Minh Huy
Guo, Zhihao
Zhou, Wei
author_facet Wang, Peng
Pham, Minh Huy
Guo, Zhihao
Zhou, Wei
contents Robotic task planning in real-world environments requires not only object recognition but also a nuanced understanding of spatial relationships between objects. We present a spatial-relationship-aware dataset of nearly 1,000 robot-acquired indoor images, annotated with object attributes, positions, and detailed spatial relationships. Captured using a Boston Dynamics Spot robot and labelled with a custom annotation tool, the dataset reflects complex scenarios with similar or identical objects and intricate spatial arrangements. We benchmark six state-of-the-art scene-graph generation models on this dataset, analysing their inference speed and relational accuracy. Our results highlight significant differences in model performance and demonstrate that integrating explicit spatial relationships into foundation models, such as ChatGPT 4o, substantially improves their ability to generate executable, spatially-aware plans for robotics. The dataset and annotation tool are publicly available at https://github.com/PengPaulWang/SpatialAwareRobotDataset, supporting further research in spatial reasoning for robotics.
format Preprint
id arxiv_https___arxiv_org_abs_2506_12525
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Spatial Relationship Aware Dataset for Robotics
Wang, Peng
Pham, Minh Huy
Guo, Zhihao
Zhou, Wei
Robotics
Robotic task planning in real-world environments requires not only object recognition but also a nuanced understanding of spatial relationships between objects. We present a spatial-relationship-aware dataset of nearly 1,000 robot-acquired indoor images, annotated with object attributes, positions, and detailed spatial relationships. Captured using a Boston Dynamics Spot robot and labelled with a custom annotation tool, the dataset reflects complex scenarios with similar or identical objects and intricate spatial arrangements. We benchmark six state-of-the-art scene-graph generation models on this dataset, analysing their inference speed and relational accuracy. Our results highlight significant differences in model performance and demonstrate that integrating explicit spatial relationships into foundation models, such as ChatGPT 4o, substantially improves their ability to generate executable, spatially-aware plans for robotics. The dataset and annotation tool are publicly available at https://github.com/PengPaulWang/SpatialAwareRobotDataset, supporting further research in spatial reasoning for robotics.
title A Spatial Relationship Aware Dataset for Robotics
topic Robotics
url https://arxiv.org/abs/2506.12525