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A pilot study of an automated personal identification process: Applying machine learning to panoramic radiographs

Imaging Science in Dentistry 2021³â 51±Ç 2È£ p.187 ~ 193
Ortiz Adrielly Garcia, Soares Gustavo Hermes, da Rosa Gabriela Cauduro, Biazevic Maria Gabriela Haye, Michel-Crosato Edgard,
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 ( Ortiz Adrielly Garcia ) - University of Sao Paulo School of Dentistry Department of Community Dentistry
 ( Soares Gustavo Hermes ) - University of Sao Paulo School of Dentistry Department of Community Dentistry
 ( da Rosa Gabriela Cauduro ) - University of Sao Paulo School of Dentistry Department of Community Dentistry
 ( Biazevic Maria Gabriela Haye ) - University of Sao Paulo School of Dentistry Department of Community Dentistry
 ( Michel-Crosato Edgard ) - University of Sao Paulo School of Dentistry Department of Community Dentistry

Abstract


Purpose: This study aimed to assess the usefulness of machine learning and automation techniques to match pairs of panoramic radiographs for personal identification.

Materials and Methods: Two hundred panoramic radiographs from 100 patients (50 males and 50 females) were randomly selected from a private radiological service database. Initially, 14 linear and angular measurements of the radiographs were made by an expert. Eight ratio indices derived from the original measurements were applied to a statistical algorithm to match radiographs from the same patients, simulating a semi-automated personal identification process. Subsequently, measurements were automatically generated using a deep neural network for image recognition, simulating a fully automated personal identification process.

Results: Approximately 85% of the radiographs were correctly matched by the automated personal identification process. In a limited number of cases, the image recognition algorithm identified 2 potential matches for the same individual. No statistically significant differences were found between measurements performed by the expert on panoramic radiographs from the same patients.

Conclusion: Personal identification might be performed with the aid of image recognition algorithms and machine learning techniques. This approach will likely facilitate the complex task of personal identification by performing an initial screening of radiographs and matching ante-mortem and post-mortem images from the same individuals.

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Machine Learning; Radiography, Panoramic; Forensic Dentistry; Neural Networks, Computer; Forensic Anthropology

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