Deeply Learned Pose Invariant Image Analysis with Applications in 3D Face Recognition

Author:

Ratyal Naeem12ORCID,Taj Imtiaz Ahmad2ORCID,Sajid Muhammad12ORCID,Mahmood Anzar1ORCID,Razzaq Sohail3,Dar Saadat Hanif4,Ali Nouman4,Usman Muhammad1,Baig Mirza Jabbar Aziz1,Mussadiq Usman1ORCID

Affiliation:

1. Department of Electrical Engineering, Mirpur University of Science and Technology (MUST), Mirpur-10250, AJK, Pakistan

2. Vision and Pattern Recognition Systems Research Group, Capital University of Science and Technology, Islamabad-45750, Pakistan

3. Department of Electrical Engineering, COMSATS University Islamabad, Abbottabad Campus, Abbottabad-22060, Pakistan

4. Department of Software Engineering, Mirpur University of Science and Technology (MUST), Mirpur-10250, AJK, Pakistan

Abstract

Face recognition aims to establish the identity of a person based on facial characteristics and is a challenging problem due to complex nature of the facial manifold. A wide range of face recognition applications are based on classification techniques and a class label is assigned to the test image that belongs to the unknown class. In this paper, a pose invariant deeply learned multiview 3D face recognition approach is proposed and aims to address two problems: face alignment and face recognition through identification and verification setups. The proposed alignment algorithm is capable of handling frontal as well as profile face images. It employs a nose tip heuristic based pose learning approach to estimate acquisition pose of the face followed by coarse to fine nose tip alignment using L2 norm minimization. The whole face is then aligned through transformation using knowledge learned from nose tip alignment. Inspired by the intrinsic facial symmetry of the Left Half Face (LHF) and Right Half Face (RHF), Deeply learned (d) Multi-View Average Half Face (d-MVAHF) features are employed for face identification using deep convolutional neural network (dCNN). For face verification d-MVAHF-Support Vector Machine (d-MVAHF-SVM) approach is employed. The performance of the proposed methodology is demonstrated through extensive experiments performed on four databases: GavabDB, Bosphorus, UMB-DB, and FRGC v2.0. The results show that the proposed approach yields superior performance as compared to existing state-of-the-art methods.

Publisher

Hindawi Limited

Subject

General Engineering,General Mathematics

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