Abstract

Problem statement: Palmprint based biometric method has gained high i mpact over the other biometric methods due to its ease of acquisit ion, reliability and high client acceptance. Multip le feature extraction from image gives higher accuracy of the authentication system. Approach: This study presents the palmprint based identification m ethodology which uses the Gabor wavelet entropy to extract multiple features existing on the palm p rint, by using a feature level fusion using Dempste r- Shafer theory and are classified using nearest neig hbor approach. A feature having the same vector can be grouped together using wavelet transform. A different feature of image using wavelet can be extracted. Some of the features that can be extract ed using wavelet entropy consist of contrast, correlation, energy and homogeneity. The features a re fused at feature levels. Palmprint matching is then performed by using the nearest neighbor classi fier. Results and Conclusion: We selected 100 individuals' left hand palm images; every person is 6 and the total is 600. Later we got every person each palm image as a template (total 100). The rema ining 500 were treated as the training samples. The experimental results achieve recognition accura cy of 98.6% and interesting working point with False Acceptance Rate (FAR) of = 0.03% and False Rejection Rate (FRR) of = 1.4% on the publicly available database of The Hong Kong Polytechnic University. Experimental assessment using palmprint image databases clearly validates the eff icient recognition performance of the suggested algorithm compared with the conventional palmprint recognition algorithms.

Highlights

  • Biometric based recognition is more popular and getting wide acceptance in our information society

  • Biometrics uses a variety of techniques for identifying a person based on the certain physiological or behavioral attributes

  • Biometric features of human being have a unique excellence: It is very ambiguous to remember the lengthy passwords and PIN numbers but biometric passwords are readily available for quick reference for identification

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Summary

INTRODUCTION

Biometric based recognition is more popular and getting wide acceptance in our information society. The wavelet entropy is used (iv) even with a low resolution device palmprint is for feature extraction of image. The parameters of Gabor filters are set to different scales and orientations for multiple feature extraction. Consider image is a function of f (x, y) the grey level co-occurrence matrix, the probability for grey scale i and j (in Eq 13) and occur at two pixels disjointed by distance δ and direction θ: Homogeneity: It is to measure the density of the distribution of elements in the GLCM to the GLCM diagonal. In all the cases mention below test image and train image are different: Nearest-neighbor classifiers provide good image classification when the query image is similar to one of the labeled images in its class

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