同卵双胞胎多生物特征融合研究

Bayan Omar Mohammed, S. Shamsuddin
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引用次数: 2

摘要

本文研究了异均值算法在特征水平上对同卵双胞胎进行多生物特征融合的能力。为了提高多生物特征识别的同卵双胞胎识别精度,提出了一种特征融合框架。在此基础上设计了一种新型的多生物识别系统,为同卵双胞胎特征级融合的多生物识别应用提供了指导。将该框架应用于30对双胞胎480张图像的手写体和指纹,并对分类内和分类间使用MAE进行准确性分析。该结果为检测同卵双胞胎提供了一种新的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature level Fusion for Multi-biometric with identical twins
The power of multi-biometric fusion for identical twins at the feature-level with Dis-Mean algorithm is addressed in this work. A feature-fusion framework is geared toward improving identical twins identification accuracy for multiple biometrics. A novel multi-biometric system is thus designed based on the framework, which serves as fusion guidelines for multi-biometric applications that fuse at the feature-level with identical twins. This framework was applied to the twin handwriting and fingerprint to 30 twins with 480 images, when using MAE for intra-class and inter-class for accuracy. The result provides an alternative mechanism to detect identical twin besides using the traditional methods.
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