A Mixed Modified LBP Approach for the Recognition of Real Life Human Faces
Author(s): SAHA, Bapi; GHOSHAL, Dibyendu
Author(s) keywords: back propagation algorithm, human face recognition, micro pattern, modified Local Binary Pattern, Multilayer Feed Forward Neural Network
Reference keywords: face recognition
Abstract:
Human face is one kind of multidimensional visual pattern. In this paper, a modified Local Binary Pattern (LBP) method is applied for human face feature extraction and features are computed from micro patterns created using modified LBP from human faces. Face cluster classification as well as recognition is done by Multilayer Feed Forward Neural Network including back propagation algorithm for learning. In the present study, both real life male and female face images are captured and taken for implementation and an improved result has been obtained.
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Article Title: A Mixed Modified LBP Approach for the Recognition of Real Life Human Faces
Author(s): SAHA, Bapi; GHOSHAL, Dibyendu
Date of Publication: 2016-06-29
Publication: International Journal of Information Security and Cybercrime
ISSN: 2285-9225 e-ISSN: 2286-0096
Digital Object Identifier: 10.19107/IJISC.2016.01.03
Issue: Volume 5, Issue 1, Year 2016
Section: Advances in Information Security Research
Page Range: 45-54 (10 pages)
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