Probabilistic Fingermark Quality Assessment with Quality Region Localisation

Author:

Oblak Tim12ORCID,Haraksim Rudolf2ORCID,Beslay Laurent2,Peer Peter1ORCID

Affiliation:

1. Faculty of Computer and Information Science, University of Ljubljana, 1000 Ljubljana, Slovenia

2. Joint Research Centre, European Commission, 21027 Ispra, Italy

Abstract

The assessment of fingermark (latent fingerprint) quality is an intrinsic part of a forensic investigation. The fingermark quality indicates the value and utility of the trace evidence recovered from the crime scene in the course of a forensic investigation; it determines how the evidence will be processed, and it correlates with the probability of finding a corresponding fingerprint in the reference dataset. The deposition of fingermarks on random surfaces occurs spontaneously in an uncontrolled fashion, which introduces imperfections to the resulting impression of the friction ridge pattern. In this work, we propose a new probabilistic framework for Automated Fingermark Quality Assessment (AFQA). We used modern deep learning techniques, which have the ability to extract patterns even from noisy data, and combined them with a methodology from the field of eXplainable AI (XAI) to make our models more transparent. Our solution first predicts a quality probability distribution, from which we then calculate the final quality value and, if needed, the uncertainty of the model. Additionally, we complemented the predicted quality value with a corresponding quality map. We used GradCAM to determine which regions of the fingermark had the largest effect on the overall quality prediction. We show that the resulting quality maps are highly correlated with the density of minutiae points in the input image. Our deep learning approach achieved high regression performance, while significantly improving the interpretability and transparency of the predictions.

Funder

European Commission Joint Research Centre

Slovenian Research Agency

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference52 articles.

1. Barnes, J.G. (2010). Fingerprint Sourcebook, U.S. Department of Justice, National Institute of Justice. Chapter 1.

2. Haraksim, R., Galbally, J., and Beslay, L. (2019). Study on Fingermark and Palmmark Identification Technologies for their Implementation in the Schengen Information System, Publications Office of the European Union. EUR 29755 EN.

3. Latent Fingerprint Quality: A Survey of Examiners;Hicklin;J. Forensic Identif.,2011

4. Ulery, B.T., Hicklin, R.A., Buscaglia, J.A., and Roberts, M.A. (2012). Repeatability and reproducibility of decisions by latent fingerprint examiners. PLoS ONE, 7.

5. Oblak, T., Haraksim, R., Beslay, L., and Peer, P. (2021, January 15–17). Fingermark Quality Assessment: An Open-Source Toolbox. Proceedings of the International Conference of the Biometrics Special Interest Group, Darmstadt, Germany.

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