2015
DOI: 10.1088/1757-899x/94/1/012007
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The biometric-based module of smart grid system

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Cited by 3 publications
(5 citation statements)
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“…As a matter of fact, these keys, which assure the possibility of controlling the majority of crucial SDN operating characteristics, are often shared among multiple users, thus the access to the SDN core is exposed to significant security threats. In order to improve the protection level of such core-aspects, biometric technologies were proposed [148,149,151].…”
Section: Data Security For the Future Of Smart Distribution Network:mentioning
confidence: 99%
See 1 more Smart Citation
“…As a matter of fact, these keys, which assure the possibility of controlling the majority of crucial SDN operating characteristics, are often shared among multiple users, thus the access to the SDN core is exposed to significant security threats. In order to improve the protection level of such core-aspects, biometric technologies were proposed [148,149,151].…”
Section: Data Security For the Future Of Smart Distribution Network:mentioning
confidence: 99%
“…With regard to the SG paradigm, Engel et al [151] describes a possible biometric-based module. Typically, a biometric authentication module is made up of: (1) a capture device able to transduce the biometric trait into a signal that can be treated by signal processing algorithms in order to isolate the basic information from the "background"; (2) a feature extraction module, which takes as input the signal provided by the sensor and extracts from it a set of statistical or structural measurements able to characterize the uniqueness of the signal coming from a certain subject with respect to those of all other possible subjects; (3) the comparator module, which aims at comparing two features sets, and providing a degree of similarity between them, usually called matching score; (4) the decision module, which states, according to the computed matching score, if the compared signals belong to the same subject.…”
Section: Data Security For the Future Of Smart Distribution Network:mentioning
confidence: 99%
“…As a matter of fact, these keys, which assure the possibility of controlling the majority of crucial SDN operating characteristics, are often shared among multiple users, thus the access to the SDN core is exposed to significant security threats. In order to improve the protection level of such core-aspects, biometric technologies were proposed [147,148,150].…”
Section: Data Security For the Future Of Smart Distribution Network:mentioning
confidence: 99%
“…With regard to the SG paradigm, [150] describes a possible biometric-based module. Typically, a biometric authentication module is made up of: (1) a capture device able to transduce the biometric trait into a signal that can be treated by signal processing algorithms in order to isolate the basic information from the "background"; (2) a feature extraction module, which takes as input the signal provided by the sensor and extracts from it a set of statistical or structural measurements able to characterize the uniqueness of the signal coming from a certain subject with respect to those of all other possible subjects; (3) the comparator module, which aims at comparing two features sets, and providing a degree of similarity between them, usually called matching score; (4) the decision module, which states, according to the computed matching score, if the compared signals belong to the same subject.…”
Section: Data Security For the Future Of Smart Distribution Network:mentioning
confidence: 99%
“…As a result of the sensitivity shortcoming common to uni-biometric systems, Reference [24] proposed a multi-model technique by adopting fused faces and fingerprints, i.e., making use of a collaboration-based classifier to identify the faces of a different person. A selective neural network was jointly used with “Viola–Jones method-based PCA” by Reference [26] for a gridding system. Here, over 100 faces from a face-based database were distinguishable, which proves the success of the method.…”
Section: Introductionmentioning
confidence: 99%