He Yuliang, Tian Jie, Li Liang, Chen Hong, Yang Xin
Center for Biometrics and Security Research, Key Laboratory of Complex Systems and Intelligence Science, Institute of Automation, Chinese Academy of Science, PO Box 2728, Beijing 100080, China.
IEEE Trans Pattern Anal Mach Intell. 2006 Jun;28(6):850-62. doi: 10.1109/TPAMI.2006.119.
This paper introduces a novel algorithm based on global comprehensive similarity with three steps. To describe the Euclidean space-based relative features among minutiae, we first build a minutia-simplex that contains a pair of minutiae as well as their associated textures, with its transformation-variant and invariant relative features employed for the comprehensive similarity measurement and parameter estimation, respectively. By the second step, we use the ridge-based nearest neighborhood among minutiae to represent the ridge-based relative features among minutiae. With these ridge-based relative features, minutiae are grouped according to their affinity with a ridge. The Euclidean space-based and ridge-based relative features among minutiae reinforce each other in the representation of a fingerprint. Finally, we model the relationship between transformation and the comprehensive similarity between two fingerprints in terms of histogram for initial parameter estimation. Through these steps, our experiment shows that the method mentioned above is both effective and suitable for limited memory AFIS owing to its less than 1k byte template size.
本文介绍了一种基于全局综合相似度的三步新颖算法。为了描述基于欧几里得空间的细节特征之间的相对特征,我们首先构建一个细节单形,它包含一对细节特征及其相关纹理,其变换变体和不变相对特征分别用于综合相似度测量和参数估计。第二步,我们使用基于脊线的细节特征之间的最近邻来表示基于脊线的细节特征之间的相对特征。利用这些基于脊线的相对特征,根据细节特征与脊线的亲和力对细节特征进行分组。基于欧几里得空间和基于脊线的细节特征之间的相对特征在指纹表示中相互加强。最后,我们根据直方图对变换与两个指纹之间的综合相似度之间的关系进行建模,以进行初始参数估计。通过这些步骤,我们的实验表明,上述方法由于其模板大小小于1k字节,对于有限内存的自动指纹识别系统(AFIS)既有效又适用。