A generalized mixed model framework for assessing fingerprint individuality in presence of varying image quality
Sarat C. Dass, Chae Young Lim, Tapabrata Maiti

TL;DR
This paper introduces a generalized mixed model framework to quantify how fingerprint individuality decreases with image quality degradation, aiding forensic assessments and court testimonies.
Contribution
It applies Generalized Linear Mixed Models (GLMMs) with Laplace approximation to analyze fingerprint databases, accounting for varying image quality effects.
Findings
Quantifies decrease in fingerprint individuality with lower image quality
Analyzes publicly available databases FVC2002 and FVC2006
Provides estimates useful for forensic decision-making
Abstract
Fingerprint individuality refers to the extent of uniqueness of fingerprints and is the main criteria for deciding between a match versus nonmatch in forensic testimony. Often, prints are subject to varying levels of noise, for example, the image quality may be low when a print is lifted from a crime scene. A poor image quality causes human experts as well as automatic systems to make more errors in feature detection by either missing true features or detecting spurious ones. This error lowers the extent to which one can claim individualization of fingerprints that are being matched. The aim of this paper is to quantify the decrease in individualization as image quality degrades based on fingerprint images in real databases. This, in turn, can be used by forensic experts along with their testimony in a court of law. An important practical concern is that the databases used typically…
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