ATRACT: A Trustworthy Robotic Autonomous system to support Casualty Triage
Tasweer Ahmad, Rafael Pina, Sandip Pradhan, Arindam Sikdar, Mindula Illeperuma, Khizer Saeed, Peter Lee, Varuna De Silva, Ardhendu Behera

TL;DR
This paper introduces ATRACT, a human-in-the-loop system combining drone video and wearable sensors to support early battlefield casualty triage with high accuracy, enhancing safety and decision-making under extreme conditions.
Contribution
The paper presents a novel multi-modal decision support system for battlefield triage, integrating drone video and physiological sensors with data augmentation techniques.
Findings
Achieves 85.7% accuracy in action classification
Lightweight CNN performs competitively with larger models
Supports early casualty assessment in high-risk environments
Abstract
At a time when drones are increasingly associated with hostile operations, we re-purpose them for humanitarian and life-saving applications. However, adapting search and rescue drones for battlefield triage remains extremely challenging; the technology must perform reliably to support frontline medics who are forced to operate under extreme uncertainty, restricted access, and significant personal risk. Due to growing vulnerabilities of casualty evacuation in conflicting zones, this paper presents ATRACT (A Trustworthy Robotic Autonomous system to support Casualty Triage), a novel human-in-the-loop decision support system to enable early battlefield triage during the critical post-trauma period. ATRACT integrates drone-captured video with wearable sensor input for multi-modal learning to support casualty-state assessment, thereby addressing the limitations of existing systems. Drone…
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