CRAISDApr 16

Hijacking Large Audio-Language Models via Context-Agnostic and Imperceptible Auditory Prompt Injection

arXiv:2604.1460498.11 citationsh-index: 7
AI Analysis

For security researchers and developers of LALMs, this work exposes a critical vulnerability in audio-based interaction systems, highlighting the need for dedicated defenses.

The paper reveals auditory prompt injection as a threat to large audio-language models (LALMs) and proposes AudioHijack, a framework generating context-agnostic, imperceptible adversarial audio that achieves 79%-96% hijacking success across 13 models and 6 misbehavior categories, demonstrating real-world attacks on commercial voice agents.

Modern Large audio-language models (LALMs) power intelligent voice interactions by tightly integrating audio and text. This integration, however, expands the attack surface beyond text and introduces vulnerabilities in the continuous, high-dimensional audio channel. While prior work studied audio jailbreaks, the security risks of malicious audio injection and downstream behavior manipulation remain underexamined. In this work, we reveal a previously overlooked threat, auditory prompt injection, under realistic constraints of audio data-only access and strong perceptual stealth. To systematically analyze this threat, we propose \textit{AudioHijack}, a general framework that generates context-agnostic and imperceptible adversarial audio to hijack LALMs. \textit{AudioHijack} employs sampling-based gradient estimation for end-to-end optimization across diverse models, bypassing non-differentiable audio tokenization. Through attention supervision and multi-context training, it steers model attention toward adversarial audio and generalizes to unseen user contexts. We also design a convolutional blending method that modulates perturbations into natural reverberation, making them highly imperceptible to users. Extensive experiments on 13 state-of-the-art LALMs show consistent hijacking across 6 misbehavior categories, achieving average success rates of 79\%-96\% on unseen user contexts with high acoustic fidelity. Real-world studies demonstrate that commercial voice agents from Mistral AI and Microsoft Azure can be induced to execute unauthorized actions on behalf of users. These findings expose critical vulnerabilities in LALMs and highlight the urgent need for dedicated defense.

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