基于局部特征融合的多光谱掌纹识别

Amine Amraoui, Y. Fakhri, M. A. Kerroum
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引用次数: 5

摘要

当今技术世界面临的最严峻的挑战之一是创造一个个人安全的身份。生物识别技术是解决这些挑战的有效方法。但这一进展是一把双刃刀,允许恶意的人复制生物识别模式。为了克服这一问题,我们提出了一种新的掌纹多特征融合方法。这些特征来自940nm的多光谱图像,可以提取手掌皮肤下的信息。这一信息无法复制。值得注意的是,在这些图像中,灰度信息是大写的。在这种情况下,复合局部二值模式(Compound Local Binary Pattern, CLBP)可以作为构建该系统的合适方法,因为CLBP为LBP编码的每P位增加一个额外的位,以构建一个鲁棒的特征描述符,利用中心和邻居灰度值之间差异的符号和倾斜度信息。在Casia多光谱数据库上验证了该方法的有效性。实验结果表明,该方法的识别率是可靠的,对左右手掌的最佳识别率可达100%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multispectral Palmprint Recognition based on Fusion of Local Features
One of the most serious challenges faced by the present technological world is creating a personal secured identity. Biometrics is presented as an effective solution to resolve these challenges. But this progress is a double-edged knife that allows malicious persons to reproduce biometric modalities. To overcome this problem, we propose a novel approach for palmprint fusing multiple features. These features are provided from multi-spectral images with 940nm, which allows the extraction of information under the skin of the palm. This information is impossible to reproduce. It is noted that in these images, the gray scale information is capital. In this context, Compound Local Binary Pattern (CLBP) can be an appropriate approach to construct this system, because 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 approach has been verified on Casia Multi-Spectral database. The experimental results show that the recognition rates are reliable and the optimal recognition rates can reach 100% for left and right palms.
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