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首页> 外文期刊>IETE Technical Review >Two Feature-Level Fusion Methods with Feature Scaling and Hashing for Multimodal Biometrics
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Two Feature-Level Fusion Methods with Feature Scaling and Hashing for Multimodal Biometrics

机译:具有特征缩放和散列的两种特征级融合方法,用于多模式生物特征识别

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摘要

This paper presents a new feature-level information fusion mechanism based on shuffle coding, called shuffle coding-based feature-level fusion (SC-FLF), for personal authentication. Our approach (SC-FLF) aims at constructing an information fusion mechanism to integrate features from the same or different feature spaces in which the ranges of feature values from different traits differ largely. In this mechanism, the shuffle-coding operator includes dimension adjustment, feature standardization, and fusion coding. This paper addresses two distinct methods, such as feature scaling and hashing, to standardize the range of independent features of data. The shuffle encoder of the SC-FLF in Method 1 uses a feature scaling and the resulting binary code represents the distance between a set of normalized feature values with 2's complement. On the other hand, in Method 2, the shuffle encoder of the SC-FLF with hashing uses a projection framework for maximizing the features on a hyperplane and then quantizes the hash values as a sequence of binary codes. A XOR operation works as the fusion coding to produce the resulting fusion code. Three different types of fusion are designed to evaluate the fusion performance. Experimental validation illustrates that the proposed fusion methods for combining features in multimodal biometrics advances the recognition performance significantly.
机译:本文提出了一种新的基于随机编码的特征级信息融合机制,称为基于随机编码的特征级融合(SC-FLF),用于个人认证。我们的方法(SC-FLF)旨在构建一种信息融合机制,以整合来自相同或不同特征空间的特征,其中来自不同特征的特征值的范围差异很大。在这种机制中,随机编码运算符包括尺寸调整,特征标准化和融合编码。本文介绍了两种不同的方法,例如特征缩放和散列,以标准化数据独立特征的范围。方法1中SC-FLF的混洗编码器使用特征缩放,所得的二进制代码表示带有2的补码的一组归一化特征值之间的距离。另一方面,在方法2中,具有散列的SC-FLF的混洗编码器使用投影框架来最大化超平面上的特征,然后将散列值量化为二进制代码序列。 XOR操作用作融合编码以生成最终的融合码。设计了三种不同类型的融合以评估融合性能。实验验证表明,所提出的融合方法在多峰生物特征学中的组合特征大大提高了识别性能。

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