CRCLJul 24, 2025

Resource Consumption Red-Teaming for Large Vision-Language Models

arXiv:2507.18053v21 citationsh-index: 5
Originality Incremental advance
AI Analysis

This work addresses security vulnerabilities in LVLMs, which is critical for safe deployment, but it is incremental as it extends existing red-teaming methods to visual modalities.

The paper tackles the problem of resource consumption attacks (RCAs) in large vision-language models (LVLMs) by proposing RECITE, the first approach to exploit visual inputs for triggering unbounded RCAs, resulting in increased service response latency by over 26 times and additional 20% GPU utilization and memory consumption.

Resource Consumption Attacks (RCAs) have emerged as a significant threat to the deployment of Large Language Models (LLMs). With the integration of vision modalities, additional attack vectors exacerbate the risk of RCAs in large vision-language models (LVLMs). However, existing red-teaming studies have mainly overlooked visual inputs as a potential attack surface, resulting in insufficient mitigation strategies against RCAs in LVLMs. To address this gap, we propose RECITE ($\textbf{Re}$source $\textbf{C}$onsumpt$\textbf{i}$on Red-$\textbf{Te}$aming for LVLMs), the first approach for exploiting visual modalities to trigger unbounded RCAs red-teaming. First, we present $\textit{Vision Guided Optimization}$, a fine-grained pixel-level optimization to obtain \textit{Output Recall Objective} adversarial perturbations, which can induce repeating output. Then, we inject the perturbations into visual inputs, triggering unbounded generations to achieve the goal of RCAs. Empirical results demonstrate that RECITE increases service response latency by over 26 $\uparrow$, resulting in an additional 20\% increase in GPU utilization and memory consumption. Our study reveals security vulnerabilities in LVLMs and establishes a red-teaming framework that can facilitate the development of future defenses against RCAs.

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