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Cross Disciplinary Biometric Systems

Cross disciplinary biometric systems help boost the performance of the conventional systems. Not only is the recognition accuracy significantly improved, but also the robustness of the systems is greatly enhanced in the challenging environments, such as varying illumination conditions. By leveraging...

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Detalles Bibliográficos
Autores principales: Liu, Chengjun, Mago, Vijay Kumar
Lenguaje:eng
Publicado: Springer 2012
Materias:
Acceso en línea:https://dx.doi.org/10.1007/978-3-642-28457-1
http://cds.cern.ch/record/1488069
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author Liu, Chengjun
Mago, Vijay Kumar
author_facet Liu, Chengjun
Mago, Vijay Kumar
author_sort Liu, Chengjun
collection CERN
description Cross disciplinary biometric systems help boost the performance of the conventional systems. Not only is the recognition accuracy significantly improved, but also the robustness of the systems is greatly enhanced in the challenging environments, such as varying illumination conditions. By leveraging the cross disciplinary technologies, face recognition systems, fingerprint recognition systems, iris recognition systems, as well as image search systems all benefit in terms of recognition performance.  Take face recognition for an example, which is not only the most natural way human beings recognize the identity of each other, but also the least privacy-intrusive means because people show their face publicly every day. Face recognition systems display superb performance when they capitalize on the innovative ideas across color science, mathematics, and computer science (e.g., pattern recognition, machine learning, and image processing). The novel ideas lead to the development of new color models and effective color features in color science; innovative features from wavelets and statistics, and new kernel methods and novel kernel models in mathematics; new discriminant analysis frameworks, novel similarity measures, and new image analysis methods, such as fusing multiple image features from frequency domain, spatial domain, and color domain in computer science; as well as system design, new strategies for system integration, and different fusion strategies, such as the feature level fusion, decision level fusion, and new fusion strategies with novel similarity measures.
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spelling cern-14880692021-04-22T00:12:04Zdoi:10.1007/978-3-642-28457-1http://cds.cern.ch/record/1488069engLiu, ChengjunMago, Vijay KumarCross Disciplinary Biometric SystemsEngineeringCross disciplinary biometric systems help boost the performance of the conventional systems. Not only is the recognition accuracy significantly improved, but also the robustness of the systems is greatly enhanced in the challenging environments, such as varying illumination conditions. By leveraging the cross disciplinary technologies, face recognition systems, fingerprint recognition systems, iris recognition systems, as well as image search systems all benefit in terms of recognition performance.  Take face recognition for an example, which is not only the most natural way human beings recognize the identity of each other, but also the least privacy-intrusive means because people show their face publicly every day. Face recognition systems display superb performance when they capitalize on the innovative ideas across color science, mathematics, and computer science (e.g., pattern recognition, machine learning, and image processing). The novel ideas lead to the development of new color models and effective color features in color science; innovative features from wavelets and statistics, and new kernel methods and novel kernel models in mathematics; new discriminant analysis frameworks, novel similarity measures, and new image analysis methods, such as fusing multiple image features from frequency domain, spatial domain, and color domain in computer science; as well as system design, new strategies for system integration, and different fusion strategies, such as the feature level fusion, decision level fusion, and new fusion strategies with novel similarity measures.Springeroai:cds.cern.ch:14880692012
spellingShingle Engineering
Liu, Chengjun
Mago, Vijay Kumar
Cross Disciplinary Biometric Systems
title Cross Disciplinary Biometric Systems
title_full Cross Disciplinary Biometric Systems
title_fullStr Cross Disciplinary Biometric Systems
title_full_unstemmed Cross Disciplinary Biometric Systems
title_short Cross Disciplinary Biometric Systems
title_sort cross disciplinary biometric systems
topic Engineering
url https://dx.doi.org/10.1007/978-3-642-28457-1
http://cds.cern.ch/record/1488069
work_keys_str_mv AT liuchengjun crossdisciplinarybiometricsystems
AT magovijaykumar crossdisciplinarybiometricsystems