On The Power of Joint Wavelet-DCT Features for Multispectral Palmprint Recognition

09/27/2014
by   Shervin Minaee, et al.
0

Biometric-based identification has drawn a lot of attention in the recent years. Among all biometrics, palmprint is known to possess a rich set of features. In this paper we have proposed to use DCT-based features in parallel with wavelet-based ones for palmprint identification. PCA is applied to the features to reduce their dimensionality and the majority voting algorithm is used to perform classification. The features introduced here result in a near-perfectly accurate identification. This method is tested on a well-known multispectral palmprint database and an accuracy rate of 99.97-100% is achieved, outperforming all previous methods in similar conditions.

READ FULL TEXT
research
08/16/2014

Highly Accurate Multispectral Palmprint Recognition Using Statistical and Wavelet Features

Palmprint is one of the most useful physiological biometrics that can be...
research
03/02/2017

Unsupervised Steganalysis Based on Artificial Training Sets

In this paper, an unsupervised steganalysis method that combines artific...
research
03/30/2016

Palmprint Recognition Using Deep Scattering Convolutional Network

Palmprint recognition has drawn a lot of attention during the recent yea...
research
09/11/2015

Fingerprint Recognition Using Translation Invariant Scattering Network

Fingerprint recognition has drawn a lot of attention during last decades...
research
12/27/2011

Multispectral Palmprint Recognition Using a Hybrid Feature

Personal identification problem has been a major field of research in re...
research
08/28/2014

Multispectral Palmprint Recognition Using Textural Features

In order to utilize identification to the best extent, we need robust an...
research
01/05/2018

A Novel Hybrid Biometric Electronic Voting System: Integrating Finger Print and Face Recognition

A novel hybrid design based electronic voting system is proposed, implem...

Please sign up or login with your details

Forgot password? Click here to reset