Vision–Language Models (VLMs) have become essential for tasks such as image synthesis, captioning, and retrieval by aligning textual and visual information in a shared embedding space. Yet, this flexibility also makes them vulnerable to malicious prompts designed to produce unsafe content, raising critical safety concerns. Existing defenses either rely on blacklist filters, which are easily circumvented, or on heavy classifier-based systems, both of which are costly and fragile under embedding-level attacks. We address these challenges with two complementary components: Hyperbolic Prompt Espial (HyPE) and Hyperbolic Prompt Sanitization (HyPS). HyPE is a lightweight anomaly detector that leverages the structured geometry of hyperbolic space to model benign prompts and detect harmful ones as outliers. HyPS builds on this detection by applying explainable attribution methods to identify and selectively modify harmful words, neutralizing unsafe intent while preserving the original semantics of user prompts. Through extensive experiments across multiple datasets and adversarial scenarios, we prove that our framework consistently outperforms prior defenses in both detection accuracy and robustness. Together, HyPE and HyPS offer an efficient, interpretable, and resilient approach to safeguarding VLMs against malicious prompt misuse.

Harnessing Hyperbolic Geometry for Harmful Prompt Detection and Sanitization / Maljkovic, Igor; Briglia, Maria Rosaria; Masi, Iacopo; Emanuele Cina', Antonio; Roli, Fabio. - (2026). ( International Conference on Learning Representations (ICLR) Rio De Janeiro, Brazil ).

Harnessing Hyperbolic Geometry for Harmful Prompt Detection and Sanitization

Maria Rosaria Briglia;Iacopo Masi;
2026

Abstract

Vision–Language Models (VLMs) have become essential for tasks such as image synthesis, captioning, and retrieval by aligning textual and visual information in a shared embedding space. Yet, this flexibility also makes them vulnerable to malicious prompts designed to produce unsafe content, raising critical safety concerns. Existing defenses either rely on blacklist filters, which are easily circumvented, or on heavy classifier-based systems, both of which are costly and fragile under embedding-level attacks. We address these challenges with two complementary components: Hyperbolic Prompt Espial (HyPE) and Hyperbolic Prompt Sanitization (HyPS). HyPE is a lightweight anomaly detector that leverages the structured geometry of hyperbolic space to model benign prompts and detect harmful ones as outliers. HyPS builds on this detection by applying explainable attribution methods to identify and selectively modify harmful words, neutralizing unsafe intent while preserving the original semantics of user prompts. Through extensive experiments across multiple datasets and adversarial scenarios, we prove that our framework consistently outperforms prior defenses in both detection accuracy and robustness. Together, HyPE and HyPS offer an efficient, interpretable, and resilient approach to safeguarding VLMs against malicious prompt misuse.
2026
International Conference on Learning Representations (ICLR)
SVDD, anomaly detection, hyperbolic
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Harnessing Hyperbolic Geometry for Harmful Prompt Detection and Sanitization / Maljkovic, Igor; Briglia, Maria Rosaria; Masi, Iacopo; Emanuele Cina', Antonio; Roli, Fabio. - (2026). ( International Conference on Learning Representations (ICLR) Rio De Janeiro, Brazil ).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1763258
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