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引用次数: 8
摘要
近年来,许多研究人员对结合不同生物特征的特征来提高生物特征系统的识别性能表现出兴趣。在本文中,我们研究了两种非接触式生物识别模态的特征级融合,即耳朵和侧面脸。最初,使用两个最有效的局部特征描述符,如LDP(局部方向模式)和LPQ(局部相位量化)来表示这两种生物识别模式。由于两个特征描述符的结合,增加了特征集的维数,因此在归一化和融合步骤之前,PCA分别应用于两个模态。最后,对合并后的特征向量进行融合后,采用核判别公共向量(KDCV)方法获得更多的判别非线性特征。在美国圣母大学(University of Notre Dame, Collection E)侧脸数据库上进行的实验评估表明,该方法比其他现有的基于耳朵的单峰和多峰生物识别系统更有效地提高了识别性能。
Multimodal biometrie recognition using human ear and profile face
In recent years, many researchers have shown interest in combining features of different biometrie traits to improve recognition performance of the biometrie systems. In this paper, we examine the feature-level fusion of two contactless biometric modalities of the same image i.e. ear and profile face. Initially, two most efficient local feature descriptors such as LDP (Local Directional Patterns) and LPQ (Local Phase Quantisation) are used to represent both biometric modalities. Due to combination of two feature descriptors, dimension of the feature sets are increased and so PCA is separately applied to both modalities before normalization and fusion steps. Finally, to obtain more discriminant nonlinear features the Kernel Dis-criminative Common Vector (KDCV) method is employed after fusion to the combined feature vector. Experimental evaluation on University of Notre Dame (Collection E) side face database clearly reveals the proposed method is more efficient to increase the recognition performance over other existing ear based unimodal and multimodal biometric systems.