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Main Authors: Zhao, Yanpeng, Ding, Wentao, Li, Hongtao, Jia, Baoxiong, Zheng, Zilong
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.13033
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author Zhao, Yanpeng
Ding, Wentao
Li, Hongtao
Jia, Baoxiong
Zheng, Zilong
author_facet Zhao, Yanpeng
Ding, Wentao
Li, Hongtao
Jia, Baoxiong
Zheng, Zilong
contents A recent trend in vision-language models (VLMs) has been to enhance their spatial cognition for embodied domains. Despite progress, existing evaluations have been limited both in paradigm and in coverage, hindering rapid, iterative model development. To address these limitations, we propose ESPIRE, a diagnostic benchmark for embodied spatial reasoning. ESPIRE offers a simulated world that physically grounds VLMs and evaluates them on spatial-reasoning-centric robotic tasks, thus narrowing the gap between evaluation and real-world deployment. To adapt VLMs to robotic tasks, we decompose each task into localization and execution, and frame both as generative problems, in stark contrast to predominant discriminative evaluations (e.g., via visual-question answering) that rely on distractors and discard execution. This decomposition further enables a fine-grained analysis beyond passive spatial reasoning toward reasoning to act. We systematically design ESPIRE both at the instruction level and at the environment level, ensuring broad coverage of spatial reasoning scenarios. We use ESPIRE to diagnose a range of frontier VLMs and provide in-depth analysis of their spatial reasoning behaviors.
format Preprint
id arxiv_https___arxiv_org_abs_2603_13033
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle ESPIRE: A Diagnostic Benchmark for Embodied Spatial Reasoning of Vision-Language Models
Zhao, Yanpeng
Ding, Wentao
Li, Hongtao
Jia, Baoxiong
Zheng, Zilong
Computer Vision and Pattern Recognition
Machine Learning
Robotics
A recent trend in vision-language models (VLMs) has been to enhance their spatial cognition for embodied domains. Despite progress, existing evaluations have been limited both in paradigm and in coverage, hindering rapid, iterative model development. To address these limitations, we propose ESPIRE, a diagnostic benchmark for embodied spatial reasoning. ESPIRE offers a simulated world that physically grounds VLMs and evaluates them on spatial-reasoning-centric robotic tasks, thus narrowing the gap between evaluation and real-world deployment. To adapt VLMs to robotic tasks, we decompose each task into localization and execution, and frame both as generative problems, in stark contrast to predominant discriminative evaluations (e.g., via visual-question answering) that rely on distractors and discard execution. This decomposition further enables a fine-grained analysis beyond passive spatial reasoning toward reasoning to act. We systematically design ESPIRE both at the instruction level and at the environment level, ensuring broad coverage of spatial reasoning scenarios. We use ESPIRE to diagnose a range of frontier VLMs and provide in-depth analysis of their spatial reasoning behaviors.
title ESPIRE: A Diagnostic Benchmark for Embodied Spatial Reasoning of Vision-Language Models
topic Computer Vision and Pattern Recognition
Machine Learning
Robotics
url https://arxiv.org/abs/2603.13033