A Method of Data Augmentation to Train a Small Area Fingerprint
Recognition Deep Neural Network with a Normal Fingerprint Database
- URL: http://arxiv.org/abs/2203.12241v1
- Date: Wed, 23 Mar 2022 07:29:39 GMT
- Title: A Method of Data Augmentation to Train a Small Area Fingerprint
Recognition Deep Neural Network with a Normal Fingerprint Database
- Authors: JuSong Kim
- Abstract summary: We propose a method of data augmentation to train a small-area fingerprint recognition deep neural network with a normal fingerprint database.
The experimental results showed the efficiency of our method.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Fingerprints are popular among the biometric based systems due to ease of
acquisition, uniqueness and availability. Nowadays it is used in smart phone
security, digital payment and digital locker. The traditional fingerprint
matching methods based on minutiae are mainly applicable for large-area
fingerprint and the accuracy rate would reduce significantly when dealing with
small-area fingerprint from smart phone. There are many attempts to using deep
learning for small-area fingerprint recognition, and there are many successes.
But training deep neural network needs a lot of datasets for training. There is
no well-known dataset for small-area, so we have to make datasets ourselves. In
this paper, we propose a method of data augmentation to train a small-area
fingerprint recognition deep neural network with a normal fingerprint database
(such as FVC2002) and verify it via tests. The experimental results showed the
efficiency of our method.
Related papers
- Deep Learning-Based Approaches for Contactless Fingerprints Segmentation
and Extraction [1.2441902898414798]
We develop a deep learning-based segmentation tool for contactless fingerprint localization and segmentation.
In our evaluation, our segmentation method demonstrated an average mean absolute error (MAE) of 30 pixels, an error in angle prediction (EAP) of 5.92 degrees, and a labeling accuracy of 97.46%.
arXiv Detail & Related papers (2023-11-26T01:56:10Z) - Advancing 3D finger knuckle recognition via deep feature learning [51.871256510747465]
Contactless 3D finger knuckle patterns have emerged as an effective biometric identifier due to its discriminativeness, visibility from a distance, and convenience.
Recent research has developed a deep feature collaboration network which simultaneously incorporates intermediate features from deep neural networks with multiple scales.
This paper advances this approach by investigating the possibility of learning a discriminative feature vector with the least possible dimension for representing 3D finger knuckle images.
arXiv Detail & Related papers (2023-01-07T20:55:16Z) - AFR-Net: Attention-Driven Fingerprint Recognition Network [47.87570819350573]
We improve initial studies on the use of vision transformers (ViT) for biometric recognition, including fingerprint recognition.
We propose a realignment strategy using local embeddings extracted from intermediate feature maps within the networks to refine the global embeddings in low certainty situations.
This strategy can be applied as a wrapper to any existing deep learning network (including attention-based, CNN-based, or both) to boost its performance.
arXiv Detail & Related papers (2022-11-25T05:10:39Z) - FIGO: Enhanced Fingerprint Identification Approach Using GAN and One
Shot Learning Techniques [0.0]
We propose a Fingerprint Identification approach based on Generative adversarial network and One-shot learning techniques.
First, we propose a Pix2Pix model to transform low-quality fingerprint images to a higher level of fingerprint images pixel by pixel directly in the fingerprint enhancement tier.
Second, we construct a fully automated fingerprint feature extraction model using a one-shot learning approach to differentiate each fingerprint from the others in the fingerprint identification process.
arXiv Detail & Related papers (2022-08-11T02:45:42Z) - A Fingerprint Detection Method by Fingerprint Ridge Orientation Check [0.0]
Fingerprint recognition technology has been studied for a long time, and its recognition rate has recently risen to a high level.
In this paper, we propose a fingerprint detection algorithm used in a fingerprint recognition system.
arXiv Detail & Related papers (2022-05-06T05:19:41Z) - Mobile Behavioral Biometrics for Passive Authentication [65.94403066225384]
This work carries out a comparative analysis of unimodal and multimodal behavioral biometric traits.
Experiments are performed over HuMIdb, one of the largest and most comprehensive freely available mobile user interaction databases.
In our experiments, the most discriminative background sensor is the magnetometer, whereas among touch tasks the best results are achieved with keystroke.
arXiv Detail & Related papers (2022-03-14T17:05:59Z) - A Contactless Fingerprint Recognition System [5.565364597145569]
We propose an approach for developing a contactless fingerprint recognition system that captures finger photo from a distance.
The captured finger photos are then processed further to obtain global and local (minutiae-based) features.
The proposed system is developed using the Nvidia Jetson Nano development kit, which allows us to perform contactless fingerprint recognition in real-time.
arXiv Detail & Related papers (2021-08-20T08:21:55Z) - ProxyFAUG: Proximity-based Fingerprint Augmentation [81.15016852963676]
ProxyFAUG is a rule-based, proximity-based method of fingerprint augmentation.
The best performing positioning method on this dataset is improved by 40% in terms of median error and 6% in terms of mean error, with the use of the augmented dataset.
arXiv Detail & Related papers (2021-02-04T15:59:30Z) - Responsible Disclosure of Generative Models Using Scalable
Fingerprinting [70.81987741132451]
Deep generative models have achieved a qualitatively new level of performance.
There are concerns on how this technology can be misused to spoof sensors, generate deep fakes, and enable misinformation at scale.
Our work enables a responsible disclosure of such state-of-the-art generative models, that allows researchers and companies to fingerprint their models.
arXiv Detail & Related papers (2020-12-16T03:51:54Z) - Fingerprint Feature Extraction by Combining Texture, Minutiae, and
Frequency Spectrum Using Multi-Task CNN [0.14337588659482517]
We propose a novel CNN-based method for extracting fingerprint features from texture, minutiae, and frequency spectrum.
We show that the proposed method exhibits the efficient performance on fingerprint verification compared with a commercial fingerprint matching software and the conventional method.
arXiv Detail & Related papers (2020-08-27T05:15:39Z) - Latent Fingerprint Registration via Matching Densely Sampled Points [100.53031290339483]
Existing latent fingerprint registration approaches are mainly based on establishing correspondences between minutiae.
We propose a non-minutia latent fingerprint registration method which estimates the spatial transformation between a pair of fingerprints.
The proposed method achieves the state-of-the-art registration performance, especially under challenging conditions.
arXiv Detail & Related papers (2020-05-12T15:51:59Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.