指关节指纹识别系统采用复合局部二值模式

Amine Amraoui, Y. Fakhri, M. A. Kerroum
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引用次数: 6

摘要

随着数字交易的爆炸式增长,个人身份的安全是当今世界面临的严峻挑战。提供可靠和强大的识别系统已成为必要。为了克服这一问题,我们提出了一种基于复合局部二值模式(CLBP)的指关节指纹识别方法。与LBP算子不同的是,CLBP算子为LBP编码的对应于局部邻域的一个邻域的每P位增加一个额外的位,以构建一个鲁棒的特征描述符,利用中心和邻域灰度值之间差异的符号和倾斜度信息。该方法的有效性已在理大FKP数据库上得到验证。实验结果表明,与文献中已有的方法相比,该方法的识别率有了显著提高。该方法的识别率在其他算法中是最高的。左指数、左中间、右指数和右中间的最佳识别率分别为98.18%、99.29%、98.48%和98.89%。
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Finger knuckle print recognition system using compound local binary pattern
With the explosive growth of digital transactions, the security of personal identity presents a serious challenge in our world today. It has become necessary to provide reliable and robust recognition systems. To overcome this problem, we propose a novel approach for finger knuckle print using Compound Local Binary Pattern (CLBP). Unlike the LBP operator, the CLBP add an extra bit for each P bits encoded by LBP corresponding to a neighbor of the local neighborhood, in order to construct a robustious feature descriptor that exploits both the sign and the inclination information of the differences between the center and the neighbor gray values. The effectiveness of proposed method has been verified on PolyU FKP database. The experimental results show that the recognition rates are significantly improved compared with others methods existing in literature. The recognition rate of the proposed method is the highest among the other algorithms. The optimal recognition rates obtained is 98,18%, 99,29%, 98,48% and 98,89% for Left Index, Left Middle, Right Index and Right Middle, respectively.
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