How Secure Are Large Language Models (LLMs) for Navigation in Urban Environments?
Congcong Wen, Jiazhao Liang, Shuaihang Yuan, Hao Huang, Geeta Chandra Raju Bethala, Yu-Shen Liu, Mengyu Wang, Anthony Tzes, Yi Fang

TL;DR
This paper investigates vulnerabilities in LLM-based urban navigation systems, introducing novel prompt attacks that significantly degrade performance and proposing a basic defense strategy to improve security.
Contribution
It pioneers the exploration of security vulnerabilities in LLM-based navigation models and introduces specific prompt attack methods along with an initial defense approach.
Findings
Attacks cause significant performance drops across multiple metrics.
Proposed attacks are effective under both white-box and black-box scenarios.
Defense strategy improves navigation safety but requires further development.
Abstract
In the field of robotics and automation, navigation systems based on Large Language Models (LLMs) have recently demonstrated impressive performance. However, the security aspects of these systems have received relatively less attention. This paper pioneers the exploration of vulnerabilities in LLM-based navigation models in urban outdoor environments, a critical area given the widespread application of this technology in autonomous driving, logistics, and emergency services. Specifically, we introduce a novel Navigational Prompt Attack that manipulates LLM-based navigation models by perturbing the original navigational prompt, leading to incorrect actions. Based on the method of perturbation, our attacks are divided into two types: Navigational Prompt Insert (NPI) Attack and Navigational Prompt Swap (NPS) Attack. We conducted comprehensive experiments on an LLM-based navigation model…
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Taxonomy
TopicsTopic Modeling · Natural Language Processing Techniques · Speech and dialogue systems
