使用统计和小波特征的高精度掌纹识别

Shervin Minaee, AmirAli Abdolrashidi
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引用次数: 14

摘要

掌纹是最有用的生理生物特征之一,可作为个人识别系统的有力手段。掌纹的主要特征是掌纹、皱纹和脊纹,许多方法以不同的方式使用它们来解决掌纹识别问题。在这里,我们建议使用一组统计和基于小波的特征;统计捕捉掌纹的一般特征;并且基于小波来寻找那些在空间域中不明显的信息。此外,我们还使用了最小距离分类器和加权多数投票算法两种不同的分类方法进行掌纹匹配。本文提出的方法在6000个样本的掌纹数据集上进行了测试,并在大多数场景下显示出令人印象深刻的99.65%-100%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Highly accurate palmprint recognition using statistical and wavelet features
Palmprint is one of the most useful physiological biometrics that can be used as a powerful means in personal recognition systems. The major features of the palmprints are palm lines, wrinkles and ridges, and many approaches use them in different ways towards solving the palmprint recognition problem. Here we have proposed to use a set of statistical and wavelet-based features; statistical to capture the general characteristics of palmprints; and wavelet-based to find those information not evident in the spatial domain. Also we use two different classification approaches, minimum distance classifier scheme and weighted majority voting algorithm, to perform palmprint matching. The proposed method is tested on a well-known palmprint dataset of 6000 samples and has shown an impressive accuracy rate of 99.65%-100% for most scenarios.
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