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Correlation-based identification approach for multimodal biometric fusion
Authors:Ma Xin  Jing Xiaojun
Affiliation:School of Information and Communication Engineering, Beijing University of Posts and Telecommunications, Beijing 100876, China
Abstract:Information fusion is a key step in multimodal biometric systems. The feature-level fusion is more effective than the score-level and decision-level method owing to the fact that the original feature set contains richer information about the biometric data. In this paper, we present a multiset generalized canonical discriminant projection (MGCDP) method for feature-level multimodal biometric information fusion, which maximizes the correlation of the intra-class features while minimizes the correlation of the between-class. In addition, the serial MGCDP (S-MGCDP) and parallel MGCDP (P-MGCDP) strategy were also proposed, which can fuse more than two kinds of biometric information, so as to achieve better identification effect. Experiments performed on various biometric databases shows that MGCDP method outperforms other state-of-the-art feature-level information fusion approaches.
Keywords:correlation analysis  multimodal biometric information  information fusion
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