Breaking SafetyCore: Exploring the Risks of On-Device AI Deployment

Victor Guyomard, Mathis Mauvisseau, Marie Paindavoine

Published: 2025/9/8

Abstract

Due to hardware and software improvements, an increasing number of AI models are deployed on-device. This shift enhances privacy and reduces latency, but also introduces security risks distinct from traditional software. In this article, we examine these risks through the real-world case study of SafetyCore, an Android system service incorporating sensitive image content detection. We demonstrate how the on-device AI model can be extracted and manipulated to bypass detection, effectively rendering the protection ineffective. Our analysis exposes vulnerabilities of on-device AI models and provides a practical demonstration of how adversaries can exploit them.

Breaking SafetyCore: Exploring the Risks of On-Device AI Deployment | SummarXiv | SummarXiv