Nonparametric statistics for quantifying dependence between the output rankings of face recognition algorithms are described Analysis of the archived results of a large face recognition study shows that even the better algorithms exhibit significantly different behaviors. It is found that there is significant dependence in the rankings given by two algorithms to similar and dissimilar faces but that other samples are ranked independently. A class of functions known as copulas is used; it is shown that the correlations arise from a mixture of two copulas
We evaluated the adequacy of computational algo-rithms as models of human face processing by looking...
Psychophysical studies suggest that humans preferentially use a narrow band of low spatial frequenci...
<p>The average recognition rates (%) and the corresponding standard deviations (%) of different algo...
International audienceIn recent years, correlation-filter (CF)-based face recognition algorithms hav...
International audienceIn recent years, correlation-filter (CF)-based face recognition algorithms hav...
International audienceIn recent years, correlation-filter (CF)-based face recognition algorithms hav...
We propose a new method for combining multi-algorithm score-based face recognition systems, which we...
In this paper, we propose a new face recognition system based on the ordinal correlation principle. ...
In this paper we compare to the standard correlation coefficient three estimators of similarity for ...
A fundamental problem in statistics is the estimation of dependence between random variables. While ...
The FERET evaluation compared recognition rates for different semi-automated and automated face reco...
<p>The average recognition rates (%) and the corresponding standard deviations (%) of different algo...
An extensive body of literature suggests that face perception depends critically upon specialised fa...
We compared face identification by humans and machines using images taken under a variety of uncontr...
<p>The average recognition rates (%) and the corresponding standard deviations (%) of different algo...
We evaluated the adequacy of computational algo-rithms as models of human face processing by looking...
Psychophysical studies suggest that humans preferentially use a narrow band of low spatial frequenci...
<p>The average recognition rates (%) and the corresponding standard deviations (%) of different algo...
International audienceIn recent years, correlation-filter (CF)-based face recognition algorithms hav...
International audienceIn recent years, correlation-filter (CF)-based face recognition algorithms hav...
International audienceIn recent years, correlation-filter (CF)-based face recognition algorithms hav...
We propose a new method for combining multi-algorithm score-based face recognition systems, which we...
In this paper, we propose a new face recognition system based on the ordinal correlation principle. ...
In this paper we compare to the standard correlation coefficient three estimators of similarity for ...
A fundamental problem in statistics is the estimation of dependence between random variables. While ...
The FERET evaluation compared recognition rates for different semi-automated and automated face reco...
<p>The average recognition rates (%) and the corresponding standard deviations (%) of different algo...
An extensive body of literature suggests that face perception depends critically upon specialised fa...
We compared face identification by humans and machines using images taken under a variety of uncontr...
<p>The average recognition rates (%) and the corresponding standard deviations (%) of different algo...
We evaluated the adequacy of computational algo-rithms as models of human face processing by looking...
Psychophysical studies suggest that humans preferentially use a narrow band of low spatial frequenci...
<p>The average recognition rates (%) and the corresponding standard deviations (%) of different algo...