Abstract

Automatic fingerprint identification systems (AFIS) make use of global fingerprint information like ridge flow, ridge frequency, and delta or core points for fingerprint alignment, before performing matching. In latent fingerprints, the ridges will be smudged and delta or core points may not be available. It becomes difficult to pre-align fingerprints with such partial fingerprint information. Further, global features are not robust against fingerprint deformations; rotation, scale, and fingerprint matching using global features pose more challenges. We have developed a local minutia-based convolution neural network (CNN) matching model called “Combination of Nearest Neighbor Arrangement Indexing (CNNAI).” This model makes use of a set of “n” local nearest minutiae neighbor features and generates rotation-scale invariant feature vectors. Our proposed system doesn't depend upon any fingerprint alignment information. In large fingerprint databases, it becomes very difficult to query every fingerprint against every other fingerprint in the database. To address this issue, we make use of hash indexing to reduce the number of retrievals. We have used a residual learning-based CNN model to enhance and extract the minutiae features. Matching was done on FVC2004 and NIST SD27 latent fingerprint databases against 640 and 3,758 gallery fingerprint images, respectively. We obtained a Rank-1 identification rate of 80% for FVC2004 fingerprints and 84.5% for NIST SD27 latent fingerprint databases. The experimental results show improvement in the Rank-1 identification rate compared to the state-of-art algorithms, and the results reveal that the system is robust against rotation and scale.

Highlights

  • A fingerprint is one of the more popularly used biometrics used in-person identification (Lee and Gaensslen, 2001)

  • We have proposed a convolution neural network (CNN)-based automatic latent fingerprint matching system called “Combination of Nearest Neighbor Arrangement Indexing (CNNAI)” that works on local minutia features

  • The CNNAI algorithm works on the existing nearest neighbor minutiae arrangement structure and generates rotation and scale-invariant minutiae arrangement vectors based on these arrangements

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Summary

INTRODUCTION

A fingerprint is one of the more popularly used biometrics used in-person identification (Lee and Gaensslen, 2001). The latent to rolled/plain matching algorithm (Jain and Feng, 2011) proposed depends on the manually marked fingerprint features like minutiae, core points, and delta. With incomplete ridge information and distorted ridges, it becomes difficult to accurately align fingerprints to perform matching To overcome these problems, an automatic latent fingerprint identification system called “Convolution Neural Network-Based Combination of Nearest Neighbor Arrangement Indexing (CNNAI)” has been proposed. An automatic latent fingerprint identification system called “Convolution Neural Network-Based Combination of Nearest Neighbor Arrangement Indexing (CNNAI)” has been proposed This proposed system can identify a person with few minutiae points, and it does not depend upon global features to perform matching. The proposed matching model employs neural network techniques for classifying a query latent fingerprint from a class of a given set of pre-trained classes depending upon the arrangement vectors.

RESULTS AND DISCUSSION
CONCLUSIONS AND FUTURE WORK
DATA AVAILABILITY STATEMENT
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