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Flexible fast learning neural networks and their application for building highly reliable biometric cryptosystems based on dynamic features

机译:灵活的快速学习神经网络及其基于动态功能构建高度可靠的生物识别密码系统的应用

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The paper concludes an overview of the most promising methods of pattern recognition (deep learning, convolutional, evolutionary, progressive, shallow, "wide", hybrid artificial neural networks etc.) in regard to the possibility of their use to build highly reliable biometric cryptosystems on the basis of dynamic features. The authors propose a new approach - the development and training of flexible neural networks. For its implementation, the mathematical apparatus is developed that uses elements of various types of artificial neural networks, the probability theory, and mathematical statistics. The paper presents the results of these studies and formulates the range of the problems to be solved for creating a perspective fundamentals for building highly reliable biometric cryptosystems.
机译:本文得出了概述了最有希望的模式识别方法(深度学习,卷积,进化,渐进,浅,“宽阔的”,混合的“,混合的”,混合的人工神经网络等)关于其用于构建高度可靠的生物识别密码系统的可能性在动态特征的基础上。作者提出了一种新的方法 - 灵活神经网络的开发和培训。为了实现其实现,开发了数学设备,其使用各种类型的人工神经网络,概率理论和数学统计的元素。本文介绍了这些研究的结果,并制定了为建立高度可靠的生物识别密码系统创建透视基本面的问题的范围。

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