Multi-parts and multi-feature fusion in face verification

Yan Xiang, G. Su
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引用次数: 18

Abstract

Information fusion of multi-biometrics has become a center of focus for biometrics based identification and verification, and there are two fusion categories: intra-modal fusion and multi-modal fusion. In this paper, an intra-modal fusion, that is, multi-parts and multi-feature fusion (MPMFF) for face verification is studied. Two face representations are exploited, including the gray-level intensity feature and Gabor feature. Different from most face recognition methods, the MPMFF method divides a face image into five parts: bare face, eyebrows, eyes, nose and mouth, and different features of the same face part are fused at feature level. Then at decision level, five matching results based on the combined-features of different parts are calculated into a final similar score according to the weighted sum rule. Experiment results on FERET face database and our own face database show that the multi-parts and multi-feature fusion method improves the face verification performance.
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人脸验证中的多部位多特征融合
多生物特征信息融合已成为基于生物特征识别与验证的研究热点,融合有模态内融合和多模态融合两大类。本文研究了一种用于人脸验证的模内融合,即多部分多特征融合(MPMFF)。利用两种人脸表征,包括灰度强度特征和Gabor特征。与大多数人脸识别方法不同的是,MPMFF方法将人脸图像分为五个部分:裸脸、眉毛、眼睛、鼻子和嘴巴,并在特征层面融合同一面部部位的不同特征。然后在决策层,根据不同部分组合特征的5个匹配结果,根据加权和规则计算出最终的相似分数。在FERET人脸数据库和我们自己的人脸数据库上的实验结果表明,多部分多特征融合方法提高了人脸验证性能。
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