Jump to main content
US EPA
United States Environmental Protection Agency
Search
Search
Main menu
Environmental Topics
Laws & Regulations
About EPA
Health & Environmental Research Online (HERO)
Contact Us
Print
Feedback
Export to File
Search:
This record has one attached file:
Add More Files
Attach File(s):
Display Name for File*:
Save
Citation
Tags
HERO ID
7247054
Reference Type
Journal Article
Title
An approach for iris contact lens detection and classification using ensemble of customized DenseNet and SVM
Author(s)
Choudhary, M; Tiwari, V; Venkanna, U; ,
Year
2019
Is Peer Reviewed?
Yes
Journal
Future Generation Computer Systems
ISSN:
0167-739X
Publisher
ELSEVIER
Location
AMSTERDAM
Page Numbers
1259-1270
DOI
10.1016/j.future.2019.07.003
Web of Science Id
WOS:000501935700092
Abstract
In spite of the prominent advancements in iris recognition, it can significantly be deceived by contact lenses. As the contact lens wraps the iris region and obstructs sensors from capturing the actual iris. Moreover, cosmetic lenses are prone to forge the iris recognition system by registering an individual with fake iris signatures. Therefore, it is foremost to perceive the existence of the contact lens in human eyes prior to access an iris recognition system. This paper introduces a novel Densely Connected Contact Lens Detection Network (DCLNet) has been proposed, which is a deep convolutional network with dense connections among layers. DCLNet has been designed through a series of customizations over Densenet121 with the addition of Support Vector Machine (SVM) classifier on top. It accepts raw iris images without segmentation and normalization, nevertheless the impact of iris normalization on the proposed models performance is separately analyzed. Further, in order to assess the proposed model, extensive experiments are simulated on two widely eminent databases (Notre Dame (ND) Contact Lens 2013 Database and IIIT-Delhi (IIITD) Contact Lens Database). Experimental results reaffirm that the proposed model improves the Correct Classification Rate (CCR) up to 4% as compared to the state of the arts. (C) 2019 Elsevier B.V. All rights reserved.
Home
Learn about HERO
Using HERO
Search HERO
Projects in HERO
Risk Assessment
Transparency & Integrity