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Main Authors: Zhu, Qihui, Ruan, Shouwei, Yang, Xiao, Jiang, Hao, Huang, Yao, Zhao, Shiji, Fan, Hanwei, Su, Hang, Wei, Xingxing
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.21577
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author Zhu, Qihui
Ruan, Shouwei
Yang, Xiao
Jiang, Hao
Huang, Yao
Zhao, Shiji
Fan, Hanwei
Su, Hang
Wei, Xingxing
author_facet Zhu, Qihui
Ruan, Shouwei
Yang, Xiao
Jiang, Hao
Huang, Yao
Zhao, Shiji
Fan, Hanwei
Su, Hang
Wei, Xingxing
contents Despite the widespread adoption of MLLMs in embodied agents, their capabilities remain largely confined to reactive planning from immediate observations, consistently failing in spatial reasoning across extensive spatiotemporal scales. Cognitive science reveals that Biological Intelligence (BI) thrives on "mental navigation": the strategic construction of spatial representations from experience and the subsequent mental simulation of paths prior to action. To bridge the gap between AI and BI, we introduce Video2Mental, a pioneering benchmark for evaluating the mental navigation capabilities of MLLMs. The task requires constructing hierarchical cognitive maps from long egocentric videos and generating landmark-based path plans step by step, with planning accuracy verified through simulator-based physical interaction. Our benchmarking results reveal that mental navigation capability does not naturally emerge from standard pre-training. Frontier MLLMs struggle profoundly with zero-shot structured spatial representation, and their planning accuracy decays precipitously over extended horizons. To overcome this, we propose \textbf{NavMind}, a reasoning model that internalizes mental navigation using explicit, fine-grained cognitive maps as learnable intermediate representations. Through a difficulty-stratified progressive supervised fine-tuning paradigm, NavMind effectively bridges the gap between raw perception and structured planning. Experiments demonstrate that NavMind achieves superior mental navigation capabilities, significantly outperforming frontier commercial and spatial MLLMs.
format Preprint
id arxiv_https___arxiv_org_abs_2603_21577
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Mind over Space: Can Multimodal Large Language Models Mentally Navigate?
Zhu, Qihui
Ruan, Shouwei
Yang, Xiao
Jiang, Hao
Huang, Yao
Zhao, Shiji
Fan, Hanwei
Su, Hang
Wei, Xingxing
Artificial Intelligence
Despite the widespread adoption of MLLMs in embodied agents, their capabilities remain largely confined to reactive planning from immediate observations, consistently failing in spatial reasoning across extensive spatiotemporal scales. Cognitive science reveals that Biological Intelligence (BI) thrives on "mental navigation": the strategic construction of spatial representations from experience and the subsequent mental simulation of paths prior to action. To bridge the gap between AI and BI, we introduce Video2Mental, a pioneering benchmark for evaluating the mental navigation capabilities of MLLMs. The task requires constructing hierarchical cognitive maps from long egocentric videos and generating landmark-based path plans step by step, with planning accuracy verified through simulator-based physical interaction. Our benchmarking results reveal that mental navigation capability does not naturally emerge from standard pre-training. Frontier MLLMs struggle profoundly with zero-shot structured spatial representation, and their planning accuracy decays precipitously over extended horizons. To overcome this, we propose \textbf{NavMind}, a reasoning model that internalizes mental navigation using explicit, fine-grained cognitive maps as learnable intermediate representations. Through a difficulty-stratified progressive supervised fine-tuning paradigm, NavMind effectively bridges the gap between raw perception and structured planning. Experiments demonstrate that NavMind achieves superior mental navigation capabilities, significantly outperforming frontier commercial and spatial MLLMs.
title Mind over Space: Can Multimodal Large Language Models Mentally Navigate?
topic Artificial Intelligence
url https://arxiv.org/abs/2603.21577