OS-Sentinel: Towards Safety-Enhanced Mobile GUI Agents via Hybrid Validation in Realistic Workflows
Abstract
A hybrid safety detection framework combining formal verification and VLM-based contextual assessment improves the detection of unsafe operations in mobile agents.
Computer-using agents powered by Vision-Language Models (VLMs) have demonstrated human-like capabilities in operating digital environments like mobile platforms. While these agents hold great promise for advancing digital automation, their potential for unsafe operations, such as system compromise and privacy leakage, is raising significant concerns. Detecting these safety concerns across the vast and complex operational space of mobile environments presents a formidable challenge that remains critically underexplored. To establish a foundation for mobile agent safety research, we introduce MobileRisk-Live, a dynamic sandbox environment accompanied by a safety detection benchmark comprising realistic trajectories with fine-grained annotations. Built upon this, we propose OS-Sentinel, a novel hybrid safety detection framework that synergistically combines a Formal Verifier for detecting explicit system-level violations with a VLM-based Contextual Judge for assessing contextual risks and agent actions. Experiments show that OS-Sentinel achieves 10%-30% improvements over existing approaches across multiple metrics. Further analysis provides critical insights that foster the development of safer and more reliable autonomous mobile agents.
Community
- To establish a foundation for advanced mobile GUI agent safety research, this paper introduces MobileRisk-Live, a dynamic sandbox environment, and MobileRisk benchmark, which comprises realistic agent trajectories with fine-grained safety annotations.
- The paper proposes OS-Sentinel, a novel hybrid detection framework that synergistically combines a Formal Verifier to detect explicit system-level violations (using system state traces) with a VLM-based Contextual Judge to assess contextual risks from agent actions and GUI observations.
- Experimental results demonstrate that OS-Sentinel significantly outperforms existing approaches, achieving 10%-30% improvements over baseline methods and providing more comprehensive safety detection across a wide spectrum of risks.
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