papers AI Learner
The Github is limit! Click to go to the new site.

Fingerprints: Fixed Length Representation via Deep Networks and Domain Knowledge

2019-04-01
Joshua J. Engelsma, Kai Cao, Anil K. Jain

Abstract

We learn a discriminative fixed length feature representation of fingerprints which stands in contrast to commonly used unordered, variable length sets of minutiae points. To arrive at this fixed length representation, we embed fingerprint domain knowledge into a multitask deep convolutional neural network architecture. Empirical results, on two public-domain fingerprint databases (NIST SD4 and FVC 2004 DB1) show that compared to minutiae representations, extracted by two state-of-the-art commercial matchers (Verifinger v6.3 and Innovatrics v2.0.3), our fixed-length representations provide (i) higher search accuracy: Rank-1 accuracy of 97.9% vs. 97.3% on NIST SD4 against a gallery size of 2000 and (ii) significantly faster, large scale search: 682,594 matches per second vs. 22 matches per second for commercial matchers on an i5 3.3 GHz processor with 8 GB of RAM.

Abstract (translated by Google)
URL

http://arxiv.org/abs/1904.01099

PDF

http://arxiv.org/pdf/1904.01099


Similar Posts

Comments