A Bayesian Reasoning Framework for Robotic Systems in Autonomous Casualty Triage
Szymon Rusiecki, Cecilia Morales, Pia Störy, Kimberly Elenberg, Leonard Weiss + 1 more
TLDR
A Bayesian framework enhances robotic casualty triage in mass casualty incidents by fusing noisy vision data, significantly boosting assessment accuracy.
Key contributions
- Introduces an autonomous robotic system for casualty assessment in mass casualty incidents.
- Fuses multi-vision outputs (hemorrhage, trauma, alertness) using an expert-defined Bayesian network.
- Achieved nearly three-fold improvement in physiological assessment accuracy over baselines.
- Boosted overall triage accuracy from 14% to 53% and diagnostic coverage to 95% in realistic scenarios.
Why it matters
This paper addresses critical decision-making for robots in mass casualty incidents with incomplete data. Integrating expert knowledge into a probabilistic framework significantly improves reliability and decision-making, crucial for saving lives in high-stakes scenarios.
Original Abstract
Autonomous robots deployed in mass casualty incidents (MCI) face the challenge of making critical decisions based on incomplete and noisy perceptual data. We present an autonomous robotic system for casualty assessment that fuses outputs from multiple vision-based algorithms, estimating signs of severe hemorrhage, visible trauma, or physical alertness, into a coherent triage assessment. At the core of our system is a Bayesian network, constructed from expert-defined rules, which enables probabilistic reasoning about a casualty's condition even with missing or conflicting sensory inputs. The system, evaluated during the DARPA Triage Challenge (DTC) in realistic MCI scenarios involving 11 and 9 casualties, demonstrated a nearly three-fold improvement in physiological assessment accuracy (from 15\% to 42\% and 19\% to 46\%) compared to a vision-only baseline. More importantly, overall triage accuracy increased from 14\% to 53\%, while the diagnostic coverage of the system expanded from 31\% to 95\% of cases. These results demonstrate that integrating expert-guided probabilistic reasoning with advanced vision-based sensing can significantly enhance the reliability and decision-making capabilities of autonomous systems in critical real-world applications.
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