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2021 | OriginalPaper | Buchkapitel

Search of Informative Biometric Characteristic Features of the Palm Based on Parallel Shift Technology

verfasst von : Sergey Yuzhakov, Sergii Bilan, Stepan Bilan, Mykola Bilan

Erschienen in: Biometric Identification Technologies Based on Modern Data Mining Methods

Verlag: Springer International Publishing

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Abstract

Among all the biometric characteristic features of a person, the geometric shape of his palm is often used. The geometric shape of the palm is different for each person in more than 90 known parameters. However, a person can be confidently distinguished from another person using all the known biometric characteristics of the palm. Moreover, part of the quantitative values of such characteristics may coincide for several people. This is especially actual for relatives. Therefore, in this chapter the task is to find the most informative biometric characteristics of the palm, which determine the significant differences between people. To solve this problem, parallel shear technology is used. The palm image is divided into areas that make up the area of the rectangle, divided into six areas (three areas on the right and three areas on the left), two internal horizontal lines, and one vertical line. Obtained images of regions are processed using parallel shift technology, and their function of areas of intersection for different directions of shift of the image copy is determined. Relations of average values for each direction of the shift of the copy and for the images of each area are determined. A database of quantitative relations for each image is formed. The percentage of coincidence of input and reference data is analyzed and a decision is made on the identification of a person. Two quantitative characteristics were used, which determined experimentally the accuracy of identification and the most informative images of palm sites. As a result of the experiment, the most informative areas of the palm were determined, which allowed to obtain high results of biometric identification.

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Metadaten
Titel
Search of Informative Biometric Characteristic Features of the Palm Based on Parallel Shift Technology
verfasst von
Sergey Yuzhakov
Sergii Bilan
Stepan Bilan
Mykola Bilan
Copyright-Jahr
2021
DOI
https://doi.org/10.1007/978-3-030-48378-4_10

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