Integrating Anomaly Detection into Agentic AI for Proactive Risk Management in Human Activity
arXiv cs.AI / 4/22/2026
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Key Points
- The paper argues that agentic AI—goal-directed and proactive—can improve movement-related risk management, especially fall hazards in elderly populations.
- It claims existing fall detection/prediction systems struggle to generalize across care pathways and safety-critical environments due to poor context awareness, high false alarms, environmental noise, and limited data.
- The authors propose reframing fall detection and prediction as anomaly detection tasks to better capture subtle deviations in movement patterns linked to elevated risk.
- They introduce a conceptual framework where an agentic AI dynamically selects appropriate tools and builds adaptive decision-making workflows instead of using static, scenario-specific configurations.
- The work is presented as a high-level concept (not an immediate deployment-ready system), emphasizing potential value and early detection of risk changes driven by factors like aging, fatigue, or environment.


