Improving Fingerprint Pore Detection with a Small FCN

11/14/2018
by   Gabriel Dahia, et al.
0

In this work, we investigate if previously proposed CNNs for fingerprint pore detection overestimate the number of required model parameters for this task. We show that this is indeed the case by proposing a fully convolutional neural network that has significantly fewer parameters. We evaluate this model using a rigorous and reproducible protocol, which was, prior to our work, not available to the community. Using our protocol, we show that the proposed model, when combined with post-processing, performs better than previous methods, albeit being much more efficient. All our code is available at https://github.com/gdahia/fingerprint-pore-detection

READ FULL TEXT

page 4

page 5

research
11/27/2022

Fingerprint Pore Detection: A Survey

This work presents the first survey on fingerprint pore detection. The s...
research
10/06/2021

Deep Slap Fingerprint Segmentation for Juveniles and Adults

Many fingerprint recognition systems capture four fingerprints in one im...
research
09/26/2018

CNN-based Pore Detection and Description for High-Resolution Fingerprint Recognition

High-resolution fingerprint recognition usually relies on sophisticated ...
research
03/21/2018

Patch-based Fake Fingerprint Detection Using a Fully Convolutional Neural Network with a Small Number of Parameters and an Optimal Threshold

Fingerprint authentication is widely used in biometrics due to its simpl...
research
09/30/2016

Latent fingerprint minutia extraction using fully convolutional network

Minutiae play a major role in fingerprint identification. Extracting rel...
research
12/26/2017

Robust Minutiae Extractor: Integrating Deep Networks and Fingerprint Domain Knowledge

We propose a fully automatic minutiae extractor, called MinutiaeNet, bas...
research
08/23/2023

RemovalNet: DNN Fingerprint Removal Attacks

With the performance of deep neural networks (DNNs) remarkably improving...

Please sign up or login with your details

Forgot password? Click here to reset