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Feature Level Fusion Using Hand and Face Biometrics

机译:使用手和脸生物特征进行特征级融合

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摘要

Multibiometric systems utilize the evidence presented by multiple biometric sources (e.g., face and fingerprint, multiple fingers of a user, multiple matchers, etc.) in order to determine or verify the identity of an individual. Information from multiple sources can be consolidated in several distinct levels, including the feature extraction level, match score level and decision level. While fusion at the match score and decision levels have been extensively studied in the literature, fusion at the feature level is a relatively understudied problem. In this paper we discuss fusion at the feature level in 3 different scenarios: (ⅰ) fusion of PCA and LDA coefficients of face; (ⅱ) fusion of LDA coefficients corresponding to the R,G,B channels of a face image; (ⅲ) fusion of face and hand modalities. Preliminary results are encouraging and help in highlighting the pros and cons of performing fusion at this level. The primary motivation of this work is to demonstrate the viability of such a fusion and to underscore the importance of pursuing further research in this direction.
机译:多生物测定系统利用由多个生物测定来源(例如,面部和指纹,用户的多个手指,多个匹配者等)提供的证据,以确定或验证个人的身份。来自多个来源的信息可以合并为几个不同的级别,包括特征提取级别,匹配得分级别和决策级别。虽然在文献中已经广泛研究了比赛得分和决策水平上的融合,但是在特征水平上的融合却是一个相对未被充分研究的问题。在本文中,我们讨论了在3种不同情况下在特征级别上的融合:(ⅰ)融合PCA和面部LDA系数; (ⅱ)融合对应于面部图像的R,G,B通道的LDA系数; (ⅲ)面部和手部形态的融合。初步结果令人鼓舞,并有助于凸显在此级别进行融合的利弊。这项工作的主要动机是证明这种融合的可行性,并强调在这个方向上进行进一步研究的重要性。

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