Information fusion in face identification

Wenchao Zhang, S. Shan, Wen Gao, Yizheng Chang, B. Cao, Peng Yang
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引用次数: 33

Abstract

Information fusion of multi-modal biometrics has attracted much attention in recent years. However, this paper focuses on the information fusion in single models, that is, the face biometric. Two different representation methods, gray level intensity and Gabor feature, are exploited for fusion. We study the fusion problem in face recognition at both the face representation level and the confidence level. At the representation level, both the PCA feature fusion and the LDA feature fusion are considered, while at the confidence level, the sum rule and the product rule are investigated. We show through experiments on FERET face database and our own face database that appropriate information fusion can improve the performance of face recognition and verification. This suggests that gray level intensity and Gabor feature compensate for each other, based on the feasible fusion.
人脸识别中的信息融合
多模态生物识别的信息融合是近年来备受关注的问题。然而,本文关注的是单一模型的信息融合,即人脸生物识别。利用灰度强度和Gabor特征两种不同的表示方法进行融合。本文从人脸表征和置信度两个层面研究了人脸识别中的融合问题。在表示层次上考虑了PCA特征融合和LDA特征融合,在置信度层次上研究了求和规则和乘积规则。通过在FERET人脸数据库和我们自己的人脸数据库上的实验表明,适当的信息融合可以提高人脸识别和验证的性能。这表明在可行融合的基础上,灰度强度和Gabor特征相互补偿。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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