Table of Contents
Fetching ...

On the use of Aggregation Operators to improve Human Identification using Dental Records

Antonio D. Villegas-Yeguas, Guillermo R-García, Tzipi Kahana, Jorge Pinares Toledo, Esi Sharon, Oscar Ibañez, Oscar Cordón

Abstract

The comparison of dental records is a standardized technique in forensic dentistry used to speed up the identification of individuals in multiple-comparison scenarios. Specifically, the odontogram comparison is a procedure to compute criteria that will be used to perform a ranking. State-of-the-art automatic methods either make use of simple techniques, without utilizing the full potential of the information obtained from a comparison, or their internal behavior is not known due to the lack of peer-reviewed publications. This work aims to design aggregation mechanisms to automatically compare pairs of dental records that can be understood and validated by experts, improving the current methods. To do so, we introduce different aggregation approaches using the state-of-the-art codification, based on seven different criteria. In particular, we study the performance of i) data-driven lexicographical order-based aggregations, ii) well-known fuzzy logic aggregation methods and iii) machine learning techniques as aggregation mechanisms. To validate our proposals, 215 forensic cases from two different populations have been used. The results obtained show how the use of white-box machine learning techniques as aggregation models (average ranking from 2.02 to 2.21) are able to improve the state-of-the-art (average ranking of 3.91) without compromising the explainability and interpretability of the method.

On the use of Aggregation Operators to improve Human Identification using Dental Records

Abstract

The comparison of dental records is a standardized technique in forensic dentistry used to speed up the identification of individuals in multiple-comparison scenarios. Specifically, the odontogram comparison is a procedure to compute criteria that will be used to perform a ranking. State-of-the-art automatic methods either make use of simple techniques, without utilizing the full potential of the information obtained from a comparison, or their internal behavior is not known due to the lack of peer-reviewed publications. This work aims to design aggregation mechanisms to automatically compare pairs of dental records that can be understood and validated by experts, improving the current methods. To do so, we introduce different aggregation approaches using the state-of-the-art codification, based on seven different criteria. In particular, we study the performance of i) data-driven lexicographical order-based aggregations, ii) well-known fuzzy logic aggregation methods and iii) machine learning techniques as aggregation mechanisms. To validate our proposals, 215 forensic cases from two different populations have been used. The results obtained show how the use of white-box machine learning techniques as aggregation models (average ranking from 2.02 to 2.21) are able to improve the state-of-the-art (average ranking of 3.91) without compromising the explainability and interpretability of the method.
Paper Structure (32 sections, 11 equations, 8 figures, 13 tables)

This paper contains 32 sections, 11 equations, 8 figures, 13 tables.

Figures (8)

  • Figure 1: CMC plot comparing the results of our LO aggregation mechanism and Adams and Aschheim's proposal in the test dataset.
  • Figure 2: CMC plot comparing the results of our proposal of the OWA operator with Adams and Aschheim's proposal in the test dataset.
  • Figure 3: CMC plot comparing the results of our proposal of the OWHM aggregator with Adams and Aschheim's proposal in the test dataset. Notice that differently to previous CMC plots, the Y axis range is 0-100%.
  • Figure 4: CMC plot comparing the results of our proposal of the Choquet integral aggregator with Adams and Aschheim's proposal in the test dataset.
  • Figure 5: CMC plot comparing the results of our proposal of the Sugeno integral aggregator with Adams and Aschheim's proposal in the test dataset.
  • ...and 3 more figures