We propose a new method for combining multi-algorithm score-based face recognition systems, which we call the two-step calibration method. Typically, algorithms for face recognition systems produce dependent scores. The two-step method is based on parametric copulas to handle this dependence. Its goal is to minimize discrimination loss. For synthetic and real databases (NIST-face and Face3D) we will show that our method is accurate and reliable using the cost of log likelihood ratio and the information-theoretical empirical cross-entropy (ECE)
For most face recognition systems, proper registration of the faces to a common coordinate system is...
In this paper we describe a new method of likelihood ratio computation for score-based biometric rec...
<p>The results of the proposed human perception based estimation and recognition algorithm is shown ...
This paper presents an evaluation of the verification and calibration performance of a face recog-ni...
Accurate face registration is of vital importance to the performance of a face recognition algorithm...
Nonparametric statistics for quantifying dependence between the output rankings of face recognition ...
In this chapter, we describe a new robust face recognition system base on a multi-views face databas...
In this chapter, we describe a new robust face recognition system base on a multi-views face databas...
In this chapter, we describe a new robust face recognition system base on a multi-views face databas...
AbstractIn the paper we propose a face verifying algorithm for face recognition that can identify tw...
In this chapter, we describe a new robust face recognition system base on a multi-views face databas...
In this chapter, we describe a new robust face recognition system base on a multi-views face databas...
Despite over 30 years of research, face recognition is still one of the most difficult problems in t...
In this paper, a face recognition system based on the fusion of two well-known appearance-based alg...
In this paper, we propose a new face recognition system based on the ordinal correlation principle. ...
For most face recognition systems, proper registration of the faces to a common coordinate system is...
In this paper we describe a new method of likelihood ratio computation for score-based biometric rec...
<p>The results of the proposed human perception based estimation and recognition algorithm is shown ...
This paper presents an evaluation of the verification and calibration performance of a face recog-ni...
Accurate face registration is of vital importance to the performance of a face recognition algorithm...
Nonparametric statistics for quantifying dependence between the output rankings of face recognition ...
In this chapter, we describe a new robust face recognition system base on a multi-views face databas...
In this chapter, we describe a new robust face recognition system base on a multi-views face databas...
In this chapter, we describe a new robust face recognition system base on a multi-views face databas...
AbstractIn the paper we propose a face verifying algorithm for face recognition that can identify tw...
In this chapter, we describe a new robust face recognition system base on a multi-views face databas...
In this chapter, we describe a new robust face recognition system base on a multi-views face databas...
Despite over 30 years of research, face recognition is still one of the most difficult problems in t...
In this paper, a face recognition system based on the fusion of two well-known appearance-based alg...
In this paper, we propose a new face recognition system based on the ordinal correlation principle. ...
For most face recognition systems, proper registration of the faces to a common coordinate system is...
In this paper we describe a new method of likelihood ratio computation for score-based biometric rec...
<p>The results of the proposed human perception based estimation and recognition algorithm is shown ...