5 research outputs found
Fingerprint Image-Quality Estimation and its Application to Multialgorithm Verification
Signal-quality awareness has been found to increase recognition rates and to
support decisions in multisensor environments significantly. Nevertheless,
automatic quality assessment is still an open issue. Here, we study the
orientation tensor of fingerprint images to quantify signal impairments, such
as noise, lack of structure, blur, with the help of symmetry descriptors. A
strongly reduced reference is especially favorable in biometrics, but less
information is not sufficient for the approach. This is also supported by
numerous experiments involving a simpler quality estimator, a trained method
(NFIQ), as well as the human perception of fingerprint quality on several
public databases. Furthermore, quality measurements are extensively reused to
adapt fusion parameters in a monomodal multialgorithm fingerprint recognition
environment. In this study, several trained and nontrained score-level fusion
schemes are investigated. A Bayes-based strategy for incorporating experts past
performances and current quality conditions, a novel cascaded scheme for
computational efficiency, besides simple fusion rules, is presented. The
quantitative results favor quality awareness under all aspects, boosting
recognition rates and fusing differently skilled experts efficiently as well as
effectively (by training).Comment: Published at IEEE Transactions on Information Forensics and Securit
Local Feature Extraction in Fingerprints by Complex Filtering
A set of local feature descriptors for fingerprints is proposed