English

NavBench: Probing Multimodal Large Language Models for Embodied Navigation

Computer Vision and Pattern Recognition 2025-06-03 v1

Abstract

Multimodal Large Language Models (MLLMs) have demonstrated strong generalization in vision-language tasks, yet their ability to understand and act within embodied environments remains underexplored. We present NavBench, a benchmark to evaluate the embodied navigation capabilities of MLLMs under zero-shot settings. NavBench consists of two components: (1) navigation comprehension, assessed through three cognitively grounded tasks including global instruction alignment, temporal progress estimation, and local observation-action reasoning, covering 3,200 question-answer pairs; and (2) step-by-step execution in 432 episodes across 72 indoor scenes, stratified by spatial, cognitive, and execution complexity. To support real-world deployment, we introduce a pipeline that converts MLLMs' outputs into robotic actions. We evaluate both proprietary and open-source models, finding that GPT-4o performs well across tasks, while lighter open-source models succeed in simpler cases. Results also show that models with higher comprehension scores tend to achieve better execution performance. Providing map-based context improves decision accuracy, especially in medium-difficulty scenarios. However, most models struggle with temporal understanding, particularly in estimating progress during navigation, which may pose a key challenge.

Keywords

Cite

@article{arxiv.2506.01031,
  title  = {NavBench: Probing Multimodal Large Language Models for Embodied Navigation},
  author = {Yanyuan Qiao and Haodong Hong and Wenqi Lyu and Dong An and Siqi Zhang and Yutong Xie and Xinyu Wang and Qi Wu},
  journal= {arXiv preprint arXiv:2506.01031},
  year   = {2025}
}
R2 v1 2026-07-01T02:53:11.535Z