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  • Disrupting Hierarchical Reasoning: Adversarial Protection for Geographic Privacy in Multimodal Reasoning Models

arXiv:2512.08503v2 Announce Type: replace-cross
Abstract: Multi-modal large reasoning models (MLRMs) pose significant privacy risks by inferring precise geographic locations from personal images through hierarchical chain-of-thought reasoning. Existing privacy protection techniques, primarily designed for perception-based models, prove ineffective against MLRMs’ sophisticated multi-step reasoning processes that analyze environmental cues. We introduce textbfReasonBreak, a novel adversarial framework specifically designed to disrupt hierarchical reasoning in MLRMs through concept-aware perturbations. Our approach is founded on the key insight that effective disruption of geographic reasoning requires perturbations aligned with conceptual hierarchies rather than uniform noise. ReasonBreak strategically targets critical conceptual dependencies within reasoning chains, generating perturbations that invalidate specific inference steps and cascade through subsequent reasoning stages. To facilitate this approach, we contribute textbfGeoPrivacy-6K, a comprehensive dataset comprising 6,341 ultra-high-resolution images ($geq$2K) with hierarchical concept annotations. Extensive evaluation across seven state-of-the-art MLRMs (including GPT-o3, GPT-5, Gemini 2.5 Pro) demonstrates ReasonBreak’s superior effectiveness, achieving a 14.4% improvement in tract-level protection (33.8% vs 19.4%) and nearly doubling block-level protection (33.5% vs 16.8%). This work establishes a new paradigm for privacy protection against reasoning-based threats.

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