In this paper, we present a framework for predicting and correcting classification decision errors based on modality reliability measures in a multimodal biometric system. In our experiments we use face and speech experts based on a recently proposed framework which uses Bayesian networks. The expert decisions and the accompanying information on their reliability are combined in a decision module that produces the final verification decision. The proposed system is consequently shown to yield higher decision accuracy than the corresponding unimodal systems
The issue of reliable authentication is of increasing importance in modern society. Corporations, bu...
Classifier selection is a problem encountered by multi-biometric systems that aim to improve perform...
The contribution of this paper is to compare paradigms coming from the classes of parametric, and no...
In this paper, we present a framework for predicting and correcting classification decision errors b...
mail.wvu.edu In this paper we describe decision dependability theory for binary classification probl...
This paper presents a multimodal biometric system based on error level fusion. Two error level fusio...
Reliability of the performance of biometric identity verification systems remains a significant chal...
In this paper we describe a technique of classifier combination used in a human identification syste...
While using more biometric traits in multimodal biometric fusion can effectively increase the system...
A practically viable multi-biometric recognition system should not only be stable, robust and accura...
Kalka, Bartlow, and Cukic adopt the work of Kryszczuk and Drygajlo on unimodal and bimodal biometric...
Biometrics is the science and technology of measuring and analyzing biological data of human body, e...
Abstract- Information fusion in biometrics has received considerable attention. The architecture pro...
The paper presents a multimodal approach for biometric authentication, based on multiple classifiers...
Abstract — Biometrics do not provide unique identification. The matching process is probabilistic an...
The issue of reliable authentication is of increasing importance in modern society. Corporations, bu...
Classifier selection is a problem encountered by multi-biometric systems that aim to improve perform...
The contribution of this paper is to compare paradigms coming from the classes of parametric, and no...
In this paper, we present a framework for predicting and correcting classification decision errors b...
mail.wvu.edu In this paper we describe decision dependability theory for binary classification probl...
This paper presents a multimodal biometric system based on error level fusion. Two error level fusio...
Reliability of the performance of biometric identity verification systems remains a significant chal...
In this paper we describe a technique of classifier combination used in a human identification syste...
While using more biometric traits in multimodal biometric fusion can effectively increase the system...
A practically viable multi-biometric recognition system should not only be stable, robust and accura...
Kalka, Bartlow, and Cukic adopt the work of Kryszczuk and Drygajlo on unimodal and bimodal biometric...
Biometrics is the science and technology of measuring and analyzing biological data of human body, e...
Abstract- Information fusion in biometrics has received considerable attention. The architecture pro...
The paper presents a multimodal approach for biometric authentication, based on multiple classifiers...
Abstract — Biometrics do not provide unique identification. The matching process is probabilistic an...
The issue of reliable authentication is of increasing importance in modern society. Corporations, bu...
Classifier selection is a problem encountered by multi-biometric systems that aim to improve perform...
The contribution of this paper is to compare paradigms coming from the classes of parametric, and no...