Fingerprint Classification Based on Deep Learning Approaches: Experimental Findings and Comparisons

Biometric classification plays a key role in fingerprint characterization, especially in the identification process. In fact, reducing the number of comparisons in biometric recognition systems is essential when dealing with large-scale databases. The classification of fingerprints aims to achieve this target by splitting fingerprints into different categories. The general approach of fingerprint classification requires pre-processing techniques that are usually computationally expensive. Deep Learning is emerging as the leading field that has been successfully applied to many areas, such as image processing. This work shows the performance of pre-trained Convolutional Neural Networks (CNNs), tested on two fingerprint databases—namely, PolyU and NIST—and comparisons to other results presented in the literature in order to establish the type of classification that allows us to obtain the best performance in terms of precision and model efficiency, among approaches under examination, namely: AlexNet, GoogLeNet, and ResNet. We present the first study that extensively compares the most used CNN architectures by classifying the fingerprints into four, five, and eight classes. From the experimental results, the best performance was obtained in the classification of the PolyU database by all the tested CNN architectures due to the higher quality of its samples. To confirm the reliability of our study and the results obtained, a statistical analysis based on the McNemar test was performed.

[1]  E. Sreenivasa Reddy,et al.  Classification of fingerprint images with the aid of morphological operation and AGNN classifier , 2018, Applied Computing and Informatics.

[2]  Damon L. Woodard,et al.  Deep Learning for Biometrics , 2018, ACM Comput. Surv..

[3]  Vincenzo Conti,et al.  MF2C3: Multi-Feature Fuzzy Clustering to Enhance Cell Colony Detection in Automated Clonogenic Assay Evaluation , 2020, Symmetry.

[4]  Giancarlo Mauri,et al.  A novel framework for MR image segmentation and quantification by using MedGA , 2019, Comput. Methods Programs Biomed..

[5]  Francisco Herrera,et al.  On the use of convolutional neural networks for robust classification of multiple fingerprint captures , 2017, Int. J. Intell. Syst..

[6]  Elena Shadrina,et al.  Functional Asymmetry and Fingerprint Features of Left-Handed and Right-Handed Young Yakuts (Mongoloid Race, North-Eastern Siberia) , 2018, Symmetry.

[7]  P. Westfall,et al.  Multiple McNemar Tests , 2010, Biometrics.

[8]  Ricardo J. Barrientos,et al.  Fingerprint Classification through Standard and Weighted Extreme Learning Machines , 2020, Applied Sciences.

[9]  McDanielPatrick,et al.  Making machine learning robust against adversarial inputs , 2018 .

[10]  Giancarlo Mauri,et al.  Resource-Efficient Hardware Implementation of a Neural-based Node for Automatic Fingerprint Classification , 2017, J. Wirel. Mob. Networks Ubiquitous Comput. Dependable Appl..

[11]  Hoang Thien Van,et al.  Fingerprint reference point detection for image retrieval based on symmetry and variation , 2012, Pattern Recognit..

[12]  Michael S. Bernstein,et al.  ImageNet Large Scale Visual Recognition Challenge , 2014, International Journal of Computer Vision.

[13]  Keqin Li,et al.  Fingerprint classification and identification algorithms for criminal investigation: A survey , 2020, Future Gener. Comput. Syst..

[14]  Vincenzo Conti,et al.  An Intelligent Sensor for Fingerprint Recognition , 2005, EUC.

[15]  F. Galton Decipherment of blurred finger prints , 1893 .

[16]  Lawrence D. Jackel,et al.  Backpropagation Applied to Handwritten Zip Code Recognition , 1989, Neural Computation.

[17]  Josef Bigün,et al.  Fingerprint Features , 2009, Encyclopedia of Biometrics.

[18]  Josef Bigün,et al.  Using Linear Symmetry Features as a Pre-processing Step for Fingerprint Images , 2001, AVBPA.

[19]  A. Grzybowski,et al.  Jan Evangelista Purkynje (1787-1869): first to describe fingerprints. , 2015, Clinics in dermatology.

[20]  Huong Thu Nguyen,et al.  Fingerprints Classification through Image Analysis and Machine Learning Method , 2019, Algorithms.

[21]  Stephanie Schuckers,et al.  Biometric Vulnerabilities, Overview , 2015, Encyclopedia of Biometrics.

[22]  Geoffrey E. Hinton,et al.  ImageNet classification with deep convolutional neural networks , 2012, Commun. ACM.