The classical likelihood ratio classifier easily collapses in many biometric applications especially with independent training-test subjects. The reason lies in the inaccurate estimation of the underlying user-specific feature density. Firstly, the feature density estimation suffers from insufficient number of user-specific samples during the enrollment phase. Even if more enrollment samples are available, it is most likely that they are not reliable enough. Furthermore, it may happen that enrolled samples do not obey the Gaussian density model. Therefore, it is crucial to properly estimate the underlying user-specific feature density in the above situations. In this paper, we give an overview of several data modeling methods. Furthermore, ...
In item response analysis it often has a large number of subjects involved so that standard software...
We propose a quick and widely applicable approach for converting biometric identification match scor...
This paper presents a novel method of fusing multiple biometrics on the matching score level. We est...
In this paper we describe a new method of likelihood ratio computation for score-based biometric rec...
Recently, in the forensic biometric community, there is a growing interest to compute a metric calle...
When two biometric specimens are compared using an automatic biometric recognition system, a similar...
In this work, we present a novel trained method for combining biometric matchers at the score level....
A biometric system used for forensic evaluation requires a conversion of the score to a likelihood r...
Abstract One of the ever present goals in biometrics research is to improve system performance. Here...
Facial marks have been studied before, either as a complement to face recognition systems or for the...
oai:ojs.pkp.sfu.ca:article/1The common expression for the Likelihood Ratio classifier using LDA assu...
Template protection techniques are privacy and security enhancing techniques of biometric reference ...
Abstract — Cohort models are non-match models available in a biometric system. They could be other e...
In a number of classification problems, the features are represented by histograms. Traditionally, h...
In this paper we evaluate the effectiveness of two likelihood normalization techniques, the backgrou...
In item response analysis it often has a large number of subjects involved so that standard software...
We propose a quick and widely applicable approach for converting biometric identification match scor...
This paper presents a novel method of fusing multiple biometrics on the matching score level. We est...
In this paper we describe a new method of likelihood ratio computation for score-based biometric rec...
Recently, in the forensic biometric community, there is a growing interest to compute a metric calle...
When two biometric specimens are compared using an automatic biometric recognition system, a similar...
In this work, we present a novel trained method for combining biometric matchers at the score level....
A biometric system used for forensic evaluation requires a conversion of the score to a likelihood r...
Abstract One of the ever present goals in biometrics research is to improve system performance. Here...
Facial marks have been studied before, either as a complement to face recognition systems or for the...
oai:ojs.pkp.sfu.ca:article/1The common expression for the Likelihood Ratio classifier using LDA assu...
Template protection techniques are privacy and security enhancing techniques of biometric reference ...
Abstract — Cohort models are non-match models available in a biometric system. They could be other e...
In a number of classification problems, the features are represented by histograms. Traditionally, h...
In this paper we evaluate the effectiveness of two likelihood normalization techniques, the backgrou...
In item response analysis it often has a large number of subjects involved so that standard software...
We propose a quick and widely applicable approach for converting biometric identification match scor...
This paper presents a novel method of fusing multiple biometrics on the matching score level. We est...