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Use of Facial Recognition Software to Identify Disaster Victims With Facial Injuries

Published online by Cambridge University Press:  10 April 2017

John Broach*
Affiliation:
University of Massachusetts Medical School/University of Massachusetts Memorial Medical Center, Worcester, Massachusetts
Rothsovann Yong
Affiliation:
Department of Emergency Medicine, Lowell General Hospital, Lowell, Massachusetts
Mary-Elise Manuell
Affiliation:
Urgent Care, Harrington HealthCare System, Southbridge, Massachusetts
Constance Nichols
Affiliation:
University of Massachusetts Medical School/University of Massachusetts Memorial Medical Center, Worcester, Massachusetts
*
Correspondence and reprint requests to John Broach, MD, MPH, MBA, FACEP, UMass Medical School/UMass Memorial Medical Center, 55 Lake Avenue North, Worcester, MA 01655 (e-mail: john.broach@umassmemorial.org).

Abstract

Objective

After large-scale disasters, victim identification frequently presents a challenge and a priority for responders attempting to reunite families and ensure proper identification of deceased persons. The purpose of this investigation was to determine whether currently commercially available facial recognition software can successfully identify disaster victims with facial injuries.

Methods

Photos of 106 people were taken before and after application of moulage designed to simulate traumatic facial injuries. These photos as well as photos from volunteers’ personal photo collections were analyzed by using facial recognition software to determine whether this technology could accurately identify a person with facial injuries.

Results

The study results suggest that a responder could expect to get a correct match between submitted photos and photos of injured patients between 39% and 45% of the time and a much higher percentage of correct returns if submitted photos were of optimal quality with percentages correct exceeding 90% in most situations.

Conclusions

The present results suggest that the use of this software would provide significant benefit to responders. Although a correct result was returned only 40% of the time, this would still likely represent a benefit for a responder trying to identify hundreds or thousands of victims. (Disaster Med Public Health Preparedness. 2017;11:568–572)

Type
Original Research
Copyright
Copyright © Society for Disaster Medicine and Public Health, Inc. 2017 

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