The performance of a face identification system varies with its enrollment size. However, most experiments evaluated the performance of algorithms at only one enrollment size with the rank-1 identification rate. The current practice does not demonstrate the usability of algorithms thoroughly. But the problem is, in order to measure identification performance at different sizes, experimenters have to repeat the evaluation with samples of those sizes, which is almost impossible when they are large. Approaches using the Binomial theorem with match and non-match scores have been proposed to estimate performance at different sizes, but as a separate process from the evaluation itself. This paper presents a new way of evaluating identification al...
One of the reasons testing biometric systems is difficult lays in the fact that the test sample avai...
The paper proposes a new approach to classification and recognition problems which takes into accoun...
In this dissertation, we present a generative model to capture the relation between facial image qua...
With the broad application of face identification, it is important that the performance estimated fo...
In this paper we describe a new method of likelihood ratio computation for score-based biometric rec...
This item is only available electronically.Unfamiliar face matching is the process of determining wh...
This paper reviews some of the major issues associated with the statistical evaluation of Human Iden...
Audio-Visual Based Person Authentication, in June 2003. The paper details the metrics used to quanti...
A key concern in Automatic Face Recognition (AFR) is the decrease of recognition performance as the ...
Face identification performance in sensitivity d’ (n = 24; means and 95% confidence intervals).</p
This paper proposes a new methodology for comparing} two performance methods based on confidence int...
This paper presents an evaluation of the verification and calibration performance of a face recog-ni...
Face recognition has become an interesting research area in the recent era, and blends knowledge fro...
Abstract: Biometric identification and verification technologies, in the past, have pro-mised high p...
We propose a quick and widely applicable approach for converting biometric identification match scor...
One of the reasons testing biometric systems is difficult lays in the fact that the test sample avai...
The paper proposes a new approach to classification and recognition problems which takes into accoun...
In this dissertation, we present a generative model to capture the relation between facial image qua...
With the broad application of face identification, it is important that the performance estimated fo...
In this paper we describe a new method of likelihood ratio computation for score-based biometric rec...
This item is only available electronically.Unfamiliar face matching is the process of determining wh...
This paper reviews some of the major issues associated with the statistical evaluation of Human Iden...
Audio-Visual Based Person Authentication, in June 2003. The paper details the metrics used to quanti...
A key concern in Automatic Face Recognition (AFR) is the decrease of recognition performance as the ...
Face identification performance in sensitivity d’ (n = 24; means and 95% confidence intervals).</p
This paper proposes a new methodology for comparing} two performance methods based on confidence int...
This paper presents an evaluation of the verification and calibration performance of a face recog-ni...
Face recognition has become an interesting research area in the recent era, and blends knowledge fro...
Abstract: Biometric identification and verification technologies, in the past, have pro-mised high p...
We propose a quick and widely applicable approach for converting biometric identification match scor...
One of the reasons testing biometric systems is difficult lays in the fact that the test sample avai...
The paper proposes a new approach to classification and recognition problems which takes into accoun...
In this dissertation, we present a generative model to capture the relation between facial image qua...