Fast Palmprint Identification Using Orientation Pattern Hashing

Feng Yue, Bin Li, Ming Yu, Jiaqiang Wang
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引用次数: 8

Abstract

A palmprint identification system recognizes a query palmprint image by searching for its nearest neighbor from among all the templates in a database. When applied on a large-scale identification system, it is often necessary to speed up the nearest-neighbor searching process. In this paper, by viewing the palmprint feature as a high-dimension binary vector, we present a palmprint identification method using orientation pattern hashing. We propose three properties required by the hash function and demonstrate that the orientation pattern has all of these properties. Under some simple assumptions we give the parameter selection method for fast and accurate palmprint identification. Experimental results on the Hong Kong large scale database (9667 palms) show that the proposed method is over 16 times faster than brute force searching, while its accuracy is slightly higher. Evaluations on the CASIA palmprint database (600 palms) plus a synthetic database (100,000 palms) show a speedup of 6.8 over brute force searching and a negligible loss of accuracy.
使用方向模式哈希的快速掌纹识别
掌纹识别系统通过在数据库的所有模板中搜索其最近邻居来识别查询掌纹图像。当应用于大规模识别系统时,往往需要加快最近邻搜索过程。本文将掌纹特征看作一个高维二值向量,提出了一种基于方向模式哈希的掌纹识别方法。我们提出了哈希函数所需的三个属性,并证明了方向模式具有所有这些属性。在一些简单的假设下,给出了快速准确识别掌纹的参数选择方法。在香港大型数据库(9667手掌)上的实验结果表明,该方法比暴力搜索快16倍以上,准确率略高。对CASIA掌纹数据库(600个掌纹)和一个合成数据库(100,000个掌纹)的评估表明,与暴力搜索相比,它们的速度提高了6.8,而准确性的损失可以忽略不计。
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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