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NCJ Number: NCJ 241288   Add to Shopping cart   Find in a Library
Title: Quantitative Measures in Support of Latent Print Comparison
Author(s): Sargur N. Srihari
Date Published: 01/2013
Page Count: 63
Sponsoring Agency: National Institute of Justice
US Department of Justice
Office of Justice Programs
United States of America
Grant Number: 2009-DN-BX-K208
Sale Source: NCJRS Photocopy Services
Box 6000
Rockville, MD 20849-6000
United States of America
Document: PDF 
Type: Report (Study/Research)
Language: English
Country: United States of America
Annotation: This research addresses the evaluation of three quantitative measures: rarity of features, confidence of opinion and a probabilistic measure of similarity.
Abstract: Latent prints of friction ridge impressions have long been useful in identification, and the methodology of examining latent prints, known as ACE-V (analysis, comparison, evaluation, and verification), has been well-documented. This research addresses how to model probability distributions of features, how they can be used to determine the rarity of evidence (as measured by the probability of random correspondence in a database of given size), how to make such evaluations computationally tractable, how rarity can be combined with similarity (between the evidence and a known) to determine the confidence of a conclusion, and how to obtain a probabilistic measure of similarity. The need to quantify confidences within ACE-V has been articulated in several recent influential reports to strengthen the science of friction ridge analysis. Rarity is difficult to compute due to the large number of variables and high data requirements. The proposed solution uses probabilistic graphical models to represent spatial distributions of fingerprints represented at level 2 details (minutiae). First, the minutia coordinate system is transformed into standard position based on a point of high curvature, viz., core point; statistical regression (based on a Gaussian process formulation and a training set of latent prints) is used to estimate the core point. A directed probabilistic graphical model is constructed using inter-minutia dependencies and minutia confidences. The resulting model is used to determine the probability of random correspondence of the evidence in a database of n prints. The developed methods can be of potential use in examiner training, presentation of opinion and validating examination procedures. Tables, figures, and references
Main Term(s): Criminology
Index Term(s): Fingerprints ; Latent fingerprints ; Fingerprint classification ; Forensic science training ; NIJ final report ; NIJ grant-related documents
   
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https://www.ncjrs.gov/App/Publications/abstract.aspx?ID=263378

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