Facial recognition for disaster victim identification
Mass disaster events can result in high levels of casualties that need to be identified. Whilst disaster victim identification (DVI) relies on primary identifiers of DNA, fingerprints, and dental, these require ante-mortem data that may not exist or be easily obtainable. Facial recognition technolog...
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Veröffentlicht in: | Forensic science international 2024-08, Vol.361, p.112108, Article 112108 |
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Sprache: | eng |
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Zusammenfassung: | Mass disaster events can result in high levels of casualties that need to be identified. Whilst disaster victim identification (DVI) relies on primary identifiers of DNA, fingerprints, and dental, these require ante-mortem data that may not exist or be easily obtainable. Facial recognition technology may be able to assist. Automated facial recognition has advanced considerably and access to ante-mortem facial images are readily available. Facial recognition could therefore be used to expedite the DVI process by narrowing down leads before primary identifiers are made available. This research explores the feasibility of using automated facial recognition technology to support DVI. We evaluated the performance of a commercial-off-the-self facial recognition algorithm on post-mortem images (representing images taken after a mass disaster) against ante-mortem images (representing a database that may exist within agencies who hold face databases for identity documents (such as passports or driver's licenses). We explored facial recognition performance for different operational scenarios, with different levels of face image quality, and by cause of death. Our research is the largest facial recognition evaluation of post-mortem and ante-mortem images to date. We demonstrated that facial recognition technology would be valuable for DVI and that the performance varies by image quality and cause of death. We provide recommendations for future research.
•Conducted the largest facial recognition evaluation for post-mortem identification.•Facial recognition can return a correct match in the top 20, 71 % of the time.•Cause of death can impact facial recognition performance.•Taking suitable images improves facial recognition enrolment and matching performance. |
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ISSN: | 0379-0738 1872-6283 1872-6283 |
DOI: | 10.1016/j.forsciint.2024.112108 |