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Fingerprint Recognition: A Histogram Analysis Based Fuzzy C-Means Multilevel Structural Approach

机译:指纹识别:基于直方图分析的模糊C均值多层结构方法

摘要

In order to fight identity fraud, the use of a reliable personal identifier has become a necessity. Fingerprints are considered one of the best biometric measurements and are used as a universal personal identifier. There are two main phases in the recognition of personal identity using fingerprints: 1) extraction of suitable features of fingerprints, and 2) fingerprint matching making use of the extracted features to find the correspondence and similarity between the fingerprint images. Use of global features in minutia-based fingerprint recognition schemes enhances their recognition capability but at the expense of a substantially increased complexity. The recognition accuracies of most of the fingerprint recognition schemes, which rely on some sort of crisp clustering of the fingerprint features, are adversely affected due to the problems associated with the behavioral and anatomical characteristics of the fingerprints. The objective of this research is to develop efficient and cost-effective techniques for fingerprint recognition, that can meet the challenges arising from using both the local and global features of the fingerprints as well as effectively deal with the problems resulting from the crisp clustering of the fingerprint features. To this end, the structural information of local and global features of fingerprints are used for their decomposition, representation and matching in a multilevel hierarchical framework. The problems associated with the crisp clustering of the fingerprint features are addressed by incorporating the ideas of fuzzy logic in developing the various stages of the proposed fingerprint recognition scheme.udIn the first part of this thesis, a novel low-complexity multilevel structural scheme for fingerprint recognition (MSFR) is proposed by first decomposing fingerprint images into regions based on crisp partitioning of some global features of the fingerprints. Then, multilevel feature vectors representing the structural information of the fingerprints are formulated by employing both the global and local features, and a fast multilevel matching algorithm using this representation is devised. udInspired by the ability of fuzzy-based clustering techniques in dealing more effectively with the natural patterns, in the second part of the thesis, a new fuzzy based clustering technique that can deal with the partitioning problem of the fingerprint having the behavioral and anatomical characteristics is proposed and then used to develop a fuzzy based multilevel structural fingerprint recognition scheme. First, a histogram analysis fuzzy c-means (HA-FCM) clustering technique is devised for the partitioning of the fingerprints. The parameters of this partitioning technique, i.e., the number of clusters and the set of initial cluster centers, are determined in an automated manner by employing the histogram of the fingerprint orientation field. The development of the HA-FCM partitioning scheme is further pursued to devise an enhanced HA-FCM (EAH-FCM) algorithm. In this algorithm, the smoothness of the fingerprint partitioning is improved through a regularization of the fingerprint orientation field, and the computational complexity is reduced by decreasing the number of operations and by increasing the convergence rate of the underlying iterative process of the HA-FCM technique. Finally, a new fuzzy based fingerprint recognition scheme (FMSFR), based on the EHA-FCM partitioning scheme and the basic ideas used in the development of the MSFR scheme, is proposed.udExtensive experiments are conducted throughout this thesis using a number of challenging benchmark databases. These databases are selected from the FVC2002, FVC2004 and FVC2006 competitions containing a wide variety of challenges for fingerprint recognition. Simulation results demonstrate not only the effectiveness of the proposed techniques and schemes but also their superiority over some of the state-of-the-art techniques, in terms of the recognition accuracy and the computational complexity.
机译:为了对抗身份欺诈,使用可靠的个人标识符已成为必要。指纹被认为是最好的生物特征测量之一,并被用作通用个人识别码。使用指纹识别个人身份有两个主要阶段:1)提取适当的指纹特征,以及2)利用提取的特征进行指纹匹配,以找到指纹图像之间的对应性和相似性。在基于细节的指纹识别方案中使用全局功能可增强其识别能力,但会以大幅增加复杂性为代价。由于与指纹的行为和解剖特征有关的问题,大多数指纹识别方案的识别精度受到不利影响,这些方案依赖于指纹特征的某种清晰的聚类。这项研究的目的是开发一种高效且具有成本效益的指纹识别技术,该技术可以应对因使用指纹的局部和全局特征而引起的挑战,并能有效解决因指纹的清晰聚类而引起的问题。指纹功能。为此,指纹的局部和全局特征的结构信息被用于其在多层分层框架中的分解,表示和匹配。通过将模糊逻辑的思想纳入提出的指纹识别方案的各个阶段,解决了与指纹特征的清晰聚类有关的问题。 ud本文的第一部分,提出了一种新颖的低复杂度多层次结构方案,用于指纹识别方案。指纹识别(MSFR)是通过首先基于指纹的某些全局特征的清晰分区将指纹图像分解为区域而提出的。然后,通过利用全局和局部特征来制定表示指纹的结构信息的多级特征向量,并设计一种使用该表示的快速多级匹配算法。 ud受基于模糊聚类技术更有效地处理自然模式的能力的启发,在本文的第二部分中,提出了一种新的基于模糊聚类技术,该技术可以处理具有行为和解剖特征的指纹分区问题提出并随后用于开发基于模糊的多级结构指纹识别方案。首先,设计了一种直方图分析模糊c均值(HA-FCM)聚类技术来划分指纹。通过使用指纹取向场的直方图,以自动的方式确定该划分技术的参数,即簇的数目和初始簇中心的集合。进一步追求HA-FCM分区方案的发展以设计增强的HA-FCM(EAH-FCM)算法。在该算法中,通过对指纹方向字段进行正则化来提高指纹分区的平滑度,并通过减少操作次数和提高HA-FCM技术的基础迭代过程的收敛速度来降低计算复杂性。最后,基于EHA-FCM划分方案和MSFR方案开发中使用的基本思想,提出了一种新的基于模糊的指纹识别方案(FMSFR)。 ud本文在整个论文中进行了许多具有挑战性的实验基准数据库。这些数据库选自FVC2002,FVC2004和FVC2006竞赛,这些竞赛包含各种指纹识别挑战。仿真结果不仅证明了所提出的技术和方案的有效性,而且在识别精度和计算复杂度方面也证明了它们相对于某些最新技术的优越性。

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