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Benchmarking Fixed-Length Fingerprint Representations Across Different Embedding Sizes and Sensor Types

Tim Rohwedder, Dailé Osorio-Roig, Christian Rathgeb, Christoph Busch

202314 citationsDOI

Abstract

Traditional minutiae-based fingerprint representations consist of a variable-length set of minutiae. This necessitates a more complex comparison causing the drawback of high computational cost in one-to-many comparison. Recently, deep neural networks have been proposed to extract fixed-length embeddings from fingerprints. In this paper, we explore to what extent fingerprint texture information contained in such embeddings can be reduced in terms of dimension, while preserving high biometric performance. This is of particular interest, since it would allow to reduce the number of operations incurred at comparisons. We also study the impact in terms of recognition performance of the fingerprint textural information for two sensor types, i.e. optical and capacitive. Furthermore, the impact of rotation and translation of fingerprint images on the extraction of fingerprint embeddings is analysed. Experimental results conducted on a publicly available database reveal an optimal embedding size of 512 feature elements for the texture-based embedding part of fixed-length fingerprint representations. In addition, differences in performance between sensor types can be perceived. The source code of all experiments presented in this paper is publicly available at https://github.com/tim-rohwedder/fixed-length-fingerprint-extractors, so our work can be fully reproduced.

Topics & Concepts

BenchmarkingEmbeddingFingerprint (computing)Computer scienceFingerprint recognitionArtificial intelligencePattern recognition (psychology)BusinessMarketingBiometric Identification and SecurityFace recognition and analysisUser Authentication and Security Systems