Feature Level Clustering of Large Biometric Database

02/02/2010
by   Hunny Mehrotra, et al.
0

This paper proposes an efficient technique for partitioning large biometric database during identification. In this technique feature vector which comprises of global and local descriptors extracted from offline signature are used by fuzzy clustering technique to partition the database. As biometric features posses no natural order of sorting, thus it is difficult to index them alphabetically or numerically. Hence, some supervised criteria is required to partition the search space. At the time of identification the fuzziness criterion is introduced to find the nearest clusters for declaring the identity of query sample. The system is tested using bin-miss rate and performs better in comparison to traditional k-means approach.

READ FULL TEXT
research
02/02/2010

Feature Level Fusion of Biometrics Cues: Human Identification with Doddingtons Caricature

This paper presents a multimodal biometric system of fingerprint and ear...
research
07/24/2021

Biometric Masterkeys

Biometric authentication is used to secure digital or physical access. S...
research
12/29/2011

Automated PolyU Palmprint sample Registration and Coarse Classification

Biometric based authentication for secured access to resources has gaine...
research
07/29/2017

Synthetic Database for Evaluation of General, Fundamental Biometric Principles

We create synthetic biometric databases to study general, fundamental, b...
research
09/21/2010

Balancing clusters to reduce response time variability in large scale image search

Many algorithms for approximate nearest neighbor search in high-dimensio...
research
04/16/2022

Biometric verification of humans by means of hand geometry

This paper describes a hand geometry biometric identification system. We...
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