Sclera boundary localization using circular hough transform and a modified run-data based algorithm

Dublin Core

Title

Sclera boundary localization using circular hough transform and a modified run-data based algorithm

Subject

Biometrics
Circular hough transfrom
Compound local binary pattern
Modified run-data algorithm
Sclera boundary localization

Description

Security challenges over the years has led to the need for an improvement in the traditional security approaches. This led to the advent of biometrics. Recently, among the biometric approaches, sclera has been an area of imense study. This is due to its accuracy; however, segmentation of the sclera has been a limiting factor to the application of this biometric trait. Several approaches have been proposed in literature but there is still the need to improve the segmentation accuracy. This study proposes the use of circular hough transform and a modified run-data based algorithm. The study also presented a sclera recognition system using the compound local binary pattern for features extraction and Manhattan distance for classification. The system produced a segmentation accuracy of 99.9% for sclera blood vessels, periocular and iris (SBVPI) sclera database and 100% for manually captured sclera database. The system produced an accuracy of 99.98 for SBVPI sclera database and 99.99% for manually captured sclera database.

Creator

Tunde Taiwo Adeniyi1, Oladele Tinuke Omolewa1, Jide Kehinde Adeniyi2

Source

Journal homepage: http://telkomnika.uad.ac.id

Date

Feb 13, 2024

Contributor

PERI IRAWAN

Format

PDF

Language

ENGLISH

Type

TEXT

Files

Collection

Citation

Tunde Taiwo Adeniyi1, Oladele Tinuke Omolewa1, Jide Kehinde Adeniyi2, “Sclera boundary localization using circular hough transform and a modified run-data based algorithm,” Repository Horizon University Indonesia, accessed February 3, 2026, https://repository.horizon.ac.id/items/show/10089.