An efficient Laplace-Beltrami Spectra based technique for online iris image compression and identification

Kamta Nath Mishra
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引用次数: 1

Abstract

This research paper uses Laplace Beltrami Spectra based technique for online iris image compression for a person's eye. Normalized Eigen values (i.e. the spectrum) of iris image can be stored in the Smartcard memory and then it may be used for further identification. Hence, for verifying if two iris images are isometric or not, we need to compare the first ‘n’ Eigen values of the iris image spectra. If two iris images have the same Eigen values or same Riemannian Metrics values, it means both iris images are belonging to the same person. If two iris images have different Eigen values or different Riemannian Metrics values, it means both iris images are belonging to different persons. The experiments were conducted for 50 iris images of CASIA database. The experiments prove that the proposed technique is accurately identifying individuals on the basis of their iris images. The robustness testing was conducted by modifying few pixels in specific regions and few pixels in overall image. But, still the proposed method was able to identify individuals on the basis of their iris image patterns. The results of iris implementation reveal that the proposed method is an efficient and economically feasible.
基于拉普拉斯-贝尔特拉米光谱的虹膜图像在线压缩与识别技术
本文采用基于拉普拉斯贝尔特拉米光谱的人眼虹膜图像在线压缩技术。虹膜图像的归一化特征值(即频谱)可存储在智能卡存储器中,然后可用于进一步识别。因此,为了验证两幅虹膜图像是否等距,我们需要比较虹膜图像光谱的前“n”个特征值。如果两幅虹膜图像具有相同的特征值或相同的黎曼度量值,则表示这两幅虹膜图像属于同一个人。如果两幅虹膜图像具有不同的特征值或不同的黎曼度量值,则表示这两幅虹膜图像属于不同的人。实验采用CASIA数据库中的50幅虹膜图像。实验证明,该方法能够根据虹膜图像准确地识别个体。通过修改特定区域的少量像素和整体图像的少量像素进行鲁棒性检验。但是,该方法仍然能够根据虹膜图像模式识别个体。虹膜的实现结果表明,该方法是一种高效、经济可行的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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