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Improved Locality Preserving Projections for Multimodal Biometrics

机译:改进的多模式生物识别技术的局部保存预测

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Because of its higher reliability, wider applicability and stronger security, multimodal biometrics has become a polar research direction of biometric recognition and attracts more and more research groups focusing on this area. Along with other fusion level of multimodal biometrics, feature level can reduce the redundant information to avoid calculation consumption, and simultaneously acquire the discriminative information to improve the system performance. This paper proposed improved locality preserving projection for multimodal biometrics that orthogonalized the projection vectors and took two distinct feature vectors as the real and imaginary part of complex vectors. Face and palm are selected as the experimental objects to evaluate the proposed algorithm. Experimental results shows the performance of our algorithm outperforms two unimodal biometrics and two traditional feature level multimodal biometrics.
机译:由于多模式生物识别技术具有更高的可靠性,更广泛的适用性和更强的安全性,已成为生物识别技术的一个极地研究方向,并吸引了越来越多的研究领域关注这一领域。与多模式生物特征的其他融合级别一起,特征级别可以减少冗余信息以避免计算消耗,并同时获取区分信息以提高系统性能。本文针对多模式生物特征提出了一种改进的局部保留投影方法,该方法使投影向量正交,并将两个不同的特征向量作为复数向量的实部和虚部。选择脸部和手掌作为实验对象,以评估所提出的算法。实验结果表明,我们的算法的性能优于两个单峰生物特征和两个传统特征级多峰生物特征。

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