We present DASH (Deception-Augmented Shared mental model for Human-machine teaming), a novel framework that enhances mission resilience by embedding proactive deception into Shared Mental Models (SMM). Designed for mission-critical applications such as surveillance and rescue, DASH introduces "bait tasks" to detect insider threats, e.g., compromised Unmanned Ground Vehicles (UGVs), AI agents, or human analysts, before they degrade team performance. Upon detection, tailored recovery mechanisms are activated, including UGV system reinstallation, AI model retraining, or human analyst replacement. In contrast to existing SMM approaches that neglect insider risks, DASH improves both coordination and security. Empirical evaluations across four schemes (DASH, SMM-only, no-SMM, and baseline) show that DASH sustains approximately 80% mission success under high attack rates, eight times higher than the baseline. This work contributes a practical human-AI teaming framework grounded in shared mental models, a deception-based strategy for insider threat detection, and empirical evidence of enhanced robustness under adversarial conditions. DASH establishes a foundation for secure, adaptive human-machine teaming in contested environments.


翻译:本文提出DASH(面向人机协同的欺骗增强型共享心智模型),该创新框架通过将主动欺骗机制嵌入共享心智模型(SMM)来提升任务韧性。针对监视与救援等关键任务场景,DASH通过引入"诱饵任务"检测内部威胁(例如被入侵的无人地面车辆、AI智能体或人类分析员),在其影响团队效能前实施预警。检测到威胁后,系统将启动定制化恢复机制,包括无人地面车辆系统重装、AI模型重训练或人类分析员替换。相较于现有忽视内部风险的SMM方法,DASH在提升协同效率的同时增强了安全性。通过四种方案(DASH、纯SMM、无SMM及基线)的实证评估表明,在高攻击强度下DASH能维持约80%的任务成功率,达到基线方案的八倍。本研究贡献包括:基于共享心智模型的实用人机协同框架、面向内部威胁检测的欺骗策略,以及在对抗条件下增强系统鲁棒性的实证依据。DASH为对抗环境中安全、自适应的人机协同系统奠定了理论基础。

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