Chaotic Neural Network for Biometric Pattern Recognition

Kushan Ahmadian, M. Gavrilova
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引用次数: 9

Abstract

Biometric pattern recognition emerged as one of the predominant research directions inmodern security systems. It plays a crucial role in authentication of both real-world and virtual reality entities to allow system to make an informed decision on granting access privileges or providing specialized services. The major issues tackled by the researchers are arising from the ever-growing demands on precision and performance of security systems and at the same time increasing complexity of data and/or behavioral patterns to be recognized. In this paper, we propose to deal with both issues by introducing the new approach to biometric pattern recognition, based on chaotic neural network (CNN). The proposed method allows learning the complex data patterns easily while concentrating on the most important for correct authentication features and employs a unique method to train different classifiers based on each feature set. The aggregation result depicts the final decision over the recognized identity. In order to train accurate set of classifiers, the subspace clustering method has been used to overcome the problem of high dimensionality of the feature space. The experimental results show the superior performance of the proposed method.
生物特征模式识别的混沌神经网络
生物特征模式识别已成为现代安防系统的主要研究方向之一。它在现实世界和虚拟现实实体的身份验证中起着至关重要的作用,使系统能够在授予访问权限或提供专门服务方面做出明智的决定。研究人员解决的主要问题是由于对安全系统的精度和性能的要求日益增长,同时需要识别的数据和/或行为模式也越来越复杂。在本文中,我们提出通过引入基于混沌神经网络(CNN)的生物特征模式识别新方法来解决这两个问题。该方法可以轻松地学习复杂的数据模式,同时专注于最重要的正确身份验证特征,并采用独特的方法基于每个特征集训练不同的分类器。聚合结果描述了对已识别标识的最终决策。为了训练出准确的分类器集,采用子空间聚类方法克服了特征空间的高维问题。实验结果表明了该方法的优越性。
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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