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Fingerprints Authentication Using Grayscale Fractal Dimension
Author(s) -
Nadia M. G. Al-Saidi,
Arkan J. Mohammed,
Wael J. Abdulaal
Publication year - 2019
Publication title -
al-mustansiriyah journal of science
Language(s) - English
Resource type - Journals
eISSN - 2521-3520
pISSN - 1814-635X
DOI - 10.23851/mjs.v29i3.627
Subject(s) - fractal dimension , artificial intelligence , box counting , pattern recognition (psychology) , grayscale , dimension (graph theory) , fractal , similarity (geometry) , fractal analysis , computer science , fingerprint (computing) , mathematics , computer vision , biometrics , authentication (law) , image (mathematics) , mathematical analysis , pure mathematics , computer security
Characterizing of visual objects is an important role in pattern recognition that can be performed through shape analysis. Several approaches have been introduced to extract relevant information of a shape. The complexity of the shape is the most widely used approach for this purpose where fractal dimension and generalized fractal dimension are methodologies used to estimate the complexity of the shapes. The box counting dimension is one of the methods that used to estimate fractal dimension. It is estimated basically to describe the self-similarity in objects. A lot of objects have the self-similarity; fingerprint is one of those objects where the generalized box counting dimension is used for recognizing of the fingerprints to be utilized for authentication process. A new fractal dimension method is proposed in this paper. It is verified by the experiment on a set of natural texture images to show its efficiency and accuracy, and a satisfactory result is found. It also offers promising performance when it is applied for fingerprint recognition.

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