A Novel Face Recognition System by the Combination of Multiple Feature Descriptors
Nageswara Reddy1, Mohan Rao2, and Chittipothula Satyanarayana1
1Department of Computer Science and Engineering, Jawaharlal
Nehru Technological University, India
2Department of Computer Science and Engineering, Avanthi
Institute of Engineering and Technology, India
Abstract: Face
recognition system best suits several security based applications such as
access control system and identity verification system. A robust system to
recognise human faces, which relies upon features, is proposed in this work.
Initially, the reference face is created and the features are extracted from
the reference face by feature descriptors such as Local Binary Pattern (LBP),
Local Vector Pattern (LVP) and Gabor Local Vector Pattern (GLVP). The extracted
features are combined together and are clustered by employing cuckoo search
algorithm. Finally in the testing phase, the face is recognised by Extreme
Learning Machine (ELM), which differentiates faces by considering facial
features. The public database ‘Faces 95’ is exploited for analysing the performance
of the system. The proposed work is analysed for its performance and evaluated
against existing algorithms such as Principal Component Analysis (PCA),
Canonical Correlation Analysis (CCA), combination of CCA and k Nearest
Neighbour (kNN) and combination of CCA and Support Vector Machine (SVM) and
experimental results are satisfactory in terms of accuracy, misclassification
rate, sensitivity and specificity.
Keywords: Face
recognition system, LBP, LVP, GLVP, ELM.
Received January 8, 2016; accepted November 17, 2016