FINGERPRINT MATCHING WITH A NEURAL NETWORK

2016 ◽  
Author(s):  
Bernardo Sotto-Maior Peralva ◽  
Fernando Miranda Vieira Xavier ◽  
Augusto Santiago Cerqueira ◽  
David Sérgio Adães Gouvea ◽  
Marcos Fidelis Costa Campos
2020 ◽  
Vol 7 ◽  
Author(s):  
Uttam U. Deshpande ◽  
V. S. Malemath ◽  
Shivanand M. Patil ◽  
Sushma V. Chaugule

Automatic Latent Fingerprint Identification Systems (AFIS) are most widely used by forensic experts in law enforcement and criminal investigations. One of the critical steps used in automatic latent fingerprint matching is to automatically extract reliable minutiae from fingerprint images. Hence, minutiae extraction is considered to be a very important step in AFIS. The performance of such systems relies heavily on the quality of the input fingerprint images. Most of the state-of-the-art AFIS failed to produce good matching results due to poor ridge patterns and the presence of background noise. To ensure the robustness of fingerprint matching against low quality latent fingerprint images, it is essential to include a good fingerprint enhancement algorithm before minutiae extraction and matching. In this paper, we have proposed an end-to-end fingerprint matching system to automatically enhance, extract minutiae, and produce matching results. To achieve this, we have proposed a method to automatically enhance the poor-quality fingerprint images using the “Automated Deep Convolutional Neural Network (DCNN)” and “Fast Fourier Transform (FFT)” filters. The Deep Convolutional Neural Network (DCNN) produces a frequency enhanced map from fingerprint domain knowledge. We propose an “FFT Enhancement” algorithm to enhance and extract the ridges from the frequency enhanced map. Minutiae from the enhanced ridges are automatically extracted using a proposed “Automated Latent Minutiae Extractor (ALME)”. Based on the extracted minutiae, the fingerprints are automatically aligned, and a matching score is calculated using a proposed “Frequency Enhanced Minutiae Matcher (FEMM)” algorithm. Experiments are conducted on FVC2002, FVC2004, and NIST SD27 latent fingerprint databases. The minutiae extraction results show significant improvement in precision, recall, and F1 scores. We obtained the highest Rank-1 identification rate of 100% for FVC2002/2004 and 84.5% for NIST SD27 fingerprint databases. The matching results reveal that the proposed system outperforms state-of-the-art systems.


1999 ◽  
Vol 20 (6-7) ◽  
pp. 467-468
Author(s):  
Charles L. Wilson ◽  
C.I. Watson ◽  
Eung Gi Paek

Author(s):  
C. P. SUMATHI ◽  
T. SANTHANAM ◽  
K. S. EASWARAKUMAR ◽  
BHANU PRASAD

This paper deals with the possibility of using ARTMAP neural network for searching fingerprint patterns from a large database. ARTMAP has the ability to perform concurrent processing, to learn fast, and to make decisions. Since ARTMAP learning is self-stabilizing, it can continue to learn from one or more databases, without performance degradation, until its full memory capacity is utilized. Generally, fingerprint matching is based on local ridge characteristics, and its efficiency depends on minutiae extraction. The proposed method uses only gray level values of the image pixels along with its neighboring ones, instead of ridge features.


Author(s):  
Sharad Pratap Singh ◽  
Shahanaz Ayub ◽  
J.P. Saini

Fingerprint matching is based on the number of minute matches between two fingerprints. Implementation mainly includes image enhancement, segmentation, orientation histogram, etc., extraction (completeness) and corresponding minutiae. Finally, a matching score is generated that indicates whether two fingerprints coincide with the help of coding with MATLAB to find the matching score and simulation of Artificial Neural Network extending the feedback of the network. Using the artificial neural network tool, an important advantage is the similarity index between the sample data or unknown data. A neural network is a massively parallel distributed processor consisting of simple processing units that have a natural property to store knowledge and computer experiences are available for use. A fingerprint comparison essentially consists of two fingerprints to generate a fingerprint match score the match score is used to determine whether the two impressions they are of the same finger. The decision is made this study shows the comparison of normal and altered fingerprints using MATLAB coding and data used to study in the self-generated data using biometric scanner also the open source data available on the web is used for finding out matching score or similarity index, The study shows that there is hardly any matching between normal and altered fingerprints of the same person.


1997 ◽  
Author(s):  
Charles L Wilson ◽  
Craig I Watson ◽  
Eung Gi Paek

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