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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >On hierarchical palmprint coding with multiple features for personal identification in large databases
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On hierarchical palmprint coding with multiple features for personal identification in large databases

机译:在大型数据库中具有多种功能的分层掌纹编码用于个人识别

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Automatic personal identification is a significant component of security systems with many challenges and practical applications. The advances in biometric technology have led to the very rapid growth in identity authentication. This paper presents a new approach to personal identification using palmprints. To tackle the key issues such as feature extraction, representation, indexing, similarity measurement, and fast search for the best match, we propose a hierarchical multifeature coding scheme to facilitate coarse-to-fine matching for efficient and effective palmprint verification and identification in a large database. In our approach, four-level features are defined: global geometry-based key point distance (Level-1 feature), global texture energy (Level-2 feature), fuzzy "interest" line (Level-3 feature), and local directional texture energy (Level-4 feature). In contrast to the existing systems that employ a fixed mechanism for feature extraction and similarity measurement, we extract multiple features and adopt different matching criteria at different levels to achieve high performance by a coarse-to-fine guided search. The proposed method has been tested in a database with 7752 palmprint images from 386 different palms. The use of Level-1, Level-2, and Level-3 features can remove candidates from the database by 9.6%, 7.8%, and 60.6%, respectively. For a system embedded with an Intel Pentium III processor (500 MHz), the execution time of the simulation of our hierarchical coding scheme for a large database with 106 palmprint samples is 2.8 s while the traditional sequential approach requires 6.7 s with 4.5% verification equal error rate. Our experimental results demonstrate the feasibility and effectiveness of the proposed method.
机译:自动个人识别是安全系统的重要组成部分,具有许多挑战和实际应用。生物识别技术的进步导致身份认证的快速增长。本文提出了一种使用掌纹进行个人识别的新方法。为了解决诸如特征提取,表示,索引,相似性度量和快速搜索最佳匹配之类的关键问题,我们提出了一种分层的多特征编码方案,以促进从粗到精的匹配,从而在一个组件中进行高效,有效的掌纹验证和识别。大型数据库。在我们的方法中,定义了四个级别的特征:基于全局几何的关键点距离(级别1的特征),全局纹理能量(级别2的特征),模糊的“兴趣”线(级别3的特征)和局部方向纹理能量(第4级功能)。与采用固定机制进行特征提取和相似度测量的现有系统相比,我们提取多个特征并在不同级别采用不同的匹配标准,以实现从粗到精的引导式搜索的高性能。在来自386种不同手掌的7752张掌纹图像的数据库中,对所提出的方法进行了测试。使用Level-1,Level-2和Level-3功能可以分别从数据库中删除候选对象9.6%,7.8%和60.6%。对于嵌入式Intel Pentium III处理器(500 MHz)的系统,对于具有106个掌纹样本的大型数据库,我们的分层编码方案仿真的执行时间为2.8 s,而传统的顺序方法则需要6.7 s,且验证率等于4.5%错误率。我们的实验结果证明了该方法的可行性和有效性。

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