多重生物识别:一种新的生物识别系统的调查与展望

Abdoul Kamal Assouma, Tahirou Djara, Abdou-Aziz Sobabe
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引用次数: 0

摘要

使用特征级融合的多生物识别系统比单生物识别系统在识别性能方面具有更高的准确性和可靠性。但在实践中,这种类型的融合很难实现,特别是当我们面对异质生物识别模式或不相容的特征时。特征融合的主要挑战是产生具有良好辨别水平的每种模态的表示。除了纯粹的生物识别模式,元数据的使用已被证明可以提高生物识别系统的性能。鉴于这些发现,我们的工作重点是多源生物识别,它允许在特征融合策略中使用纯生物识别模式和元数据。本文的主要目的是概述生物识别技术在文献中的边界,特别关注多生物识别技术,并提出一个多起源生物识别系统的模型,该模型使用纯生物识别和软生物识别模式在特征级融合策略中。提出了曲线变换和阶数统计分别用于提取纯生物特征模态的特征,并用于选择每个模态的相关特征,以确保良好的个体识别水平。在本文中,我们通过生物识别的概念,模式,优点,缺点和实现架构介绍了生物识别的概述。重点介绍了多生物识别技术,并提出了一种协调的特征融合过程。在实验中,我们提出了一种以面部和虹膜形态为纯生物特征,以面部肤色为元数据的多源系统特征融合全局模型。这个系统和结果将在以后的工作中介绍。
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Multi-Biometrics: Survey and Projection of a New Biometric System
Multi-biometric systems using feature-level fusion allow more accuracy and reliability in recognition performance than uni-biometric systems. But in practice, this type of fusion is difficult to implement especially when we are facing heterogeneous biometric modalities or incompatible features. The major challenge of feature fusion is to produce a representation of each modality with an excellent level of discrimination. Beyond pure biometric modalities, the use of metadata has proven to improve the performance of biometric systems. In view of these findings, our work focuses on multi-origin biometrics which allows the use of pure biometric modalities and metadata in a feature fusion strategy. The main objective of this paper is to present an overview of biometrics as bordered in the literature with a particular focus on multibiometrics and to propose a model of a multi-origin biometric system using pure biometric and soft biometric modalities in a feature-level fusion strategy. The curvelet transformation and the order statistics are proposed respectively for the extraction the feature of the pure biometric modalities, and for the selection of the relevant feature of each modality in order to ensure a good level of discrimination of the individuals. In this paper, we have presented the overview of biometrics through its concepts, modalities, advantages, disadvantages and implementation architectures. A focus has been put on multi-biometrics with the presentation of a harmonized process for feature fusion. For the experiments, we proposed a global model for feature fusion in a multi-origin system using face and iris modalities as pure biometrics, and facial skin color as metadata. This system and the results will be presented in future work.
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