{"title":"基于机器学习方法的人脸和虹膜生物特征识别特征提取与分类","authors":"M. Oravec","doi":"10.1109/ELMAR.2014.6923301","DOIUrl":null,"url":null,"abstract":"Biometric recognition became an integral part of our living. This paper deals with machine learning methods for recognition of humans based on face and iris biometrics. The main intention of machine learning area is to reach a state when machines (computers) are able to respond without humans explicitly programming them. This area is closely related to artificial intelligence, knowledge discovery, data mining and neurocomputing. We present relevant machine learning methods with main focus on neural networks. Some aspects of theory of neural networks are addressed such as visualization of processes in neural networks, internal representations of input data as a basis for new feature extraction methods and their applications to image compression and classification. Machine learning methods can be efficiently used for feature extraction and classification and therefore are directly applicable to biometric systems. Biometrics deals with the recognition of people based on physiological and behavioral characteristics. Biometric recognition uses automated methods for recognition and this is why it is closely related to machine learning. Face recognition is discussed in this presentation - it covers the aspects of face detection, detection of facial features, classification in face recognition systems, state-of-the-art in biometric face recognition, face recognition in controlled and uncontrolled conditions and single-sample problem in face recognition. Iris recognition is analyzed from the point of view of state-of-the art in iris recognition, 2D Gabor wavelets, use of convolution kernels and possibilities for the design of new kernels. Software and hardware implementations of face and iris recognition systems are discussed and an implementation of a multimodal interface (face and iris part of a system) is presented. Also a contribution of Machine Learning Group working at FEI SUT Bratislava (http://www.uim.elf.stuba.sk/kaivt/MLgroup) to this research area is shown.","PeriodicalId":424325,"journal":{"name":"Proceedings ELMAR-2014","volume":"36 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2014-10-16","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"31","resultStr":"{\"title\":\"Feature extraction and classification by machine learning methods for biometric recognition of face and iris\",\"authors\":\"M. Oravec\",\"doi\":\"10.1109/ELMAR.2014.6923301\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Biometric recognition became an integral part of our living. 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引用次数: 31
摘要
生物识别已成为我们生活中不可或缺的一部分。本文研究了基于人脸和虹膜生物特征识别的机器学习方法。机器学习领域的主要目的是达到一种状态,即机器(计算机)能够在没有人类明确编程的情况下做出响应。该领域与人工智能、知识发现、数据挖掘和神经计算密切相关。我们提出了相关的机器学习方法,主要关注神经网络。讨论了神经网络理论的一些方面,如神经网络过程的可视化、作为新特征提取方法基础的输入数据的内部表示及其在图像压缩和分类中的应用。机器学习方法可以有效地用于特征提取和分类,因此直接适用于生物识别系统。生物计量学是根据人的生理和行为特征来识别人。生物识别使用自动化方法进行识别,这就是为什么它与机器学习密切相关。本演讲讨论了人脸识别-它涵盖了人脸检测,面部特征检测,人脸识别系统分类,生物识别人脸识别的最新技术,受控和非受控条件下的人脸识别以及人脸识别中的单样本问题。从虹膜识别的现状、二维Gabor小波、卷积核的使用以及设计新核的可能性等方面对虹膜识别进行了分析。讨论了人脸和虹膜识别系统的软件和硬件实现,并提出了一个多模态接口(人脸和虹膜系统的一部分)的实现。此外,还显示了FEI SUT Bratislava机器学习小组(http://www.uim.elf.stuba.sk/kaivt/MLgroup)对该研究领域的贡献。
Feature extraction and classification by machine learning methods for biometric recognition of face and iris
Biometric recognition became an integral part of our living. This paper deals with machine learning methods for recognition of humans based on face and iris biometrics. The main intention of machine learning area is to reach a state when machines (computers) are able to respond without humans explicitly programming them. This area is closely related to artificial intelligence, knowledge discovery, data mining and neurocomputing. We present relevant machine learning methods with main focus on neural networks. Some aspects of theory of neural networks are addressed such as visualization of processes in neural networks, internal representations of input data as a basis for new feature extraction methods and their applications to image compression and classification. Machine learning methods can be efficiently used for feature extraction and classification and therefore are directly applicable to biometric systems. Biometrics deals with the recognition of people based on physiological and behavioral characteristics. Biometric recognition uses automated methods for recognition and this is why it is closely related to machine learning. Face recognition is discussed in this presentation - it covers the aspects of face detection, detection of facial features, classification in face recognition systems, state-of-the-art in biometric face recognition, face recognition in controlled and uncontrolled conditions and single-sample problem in face recognition. Iris recognition is analyzed from the point of view of state-of-the art in iris recognition, 2D Gabor wavelets, use of convolution kernels and possibilities for the design of new kernels. Software and hardware implementations of face and iris recognition systems are discussed and an implementation of a multimodal interface (face and iris part of a system) is presented. Also a contribution of Machine Learning Group working at FEI SUT Bratislava (http://www.uim.elf.stuba.sk/kaivt/MLgroup) to this research area is shown.