Abstract

Face recognition technology is presenting exciting opportunities, but its performance gets degraded because of several factors, like pose variation, partial occlusion, expression, illumination, biased data, etc. This paper proposes a novel bird search-based shuffled shepherd optimization algorithm (BSSSO), a meta-heuristic technique motivated by the intuition of animals and the social behavior of birds, for improving the performance of face recognition. The main intention behind the research is to establish an optimization-driven deep learning approach for recognizing face images with multiple disturbing environments. The developed model undergoes three main steps, namely, (a) Noise Removal, (b) Feature Extraction, and (c) Recognition. For the removal of noise, a type II fuzzy system and cuckoo search optimization algorithm (T2FCS) is used. The feature extraction is carried out using the CNN, and landmark enabled 3D morphable model (L3DMM) is utilized to efficiently fit a 3D face from a single uncontrolled image. The obtained features are subjected to Deep CNN for face recognition, wherein the training is performed using novel BSSSO. The experimental findings on standard datasets (LFW, UMB-DB, Extended Yale B database) prove the ability of the proposed model over the existing face recognition approaches.

Highlights

  • Due to the evolution and advancement in biometric system technology, face recognition has become very popular in image and computer vision [1]

  • The obtained features are subjected to Deep convolution neural network (CNN) for face recognition, which is trained by a novel bird search-based shuffled shepherd optimization algorithm (BSSSO)

  • The results of the proposed BSSSO-based Deep CNN for face recognition are elaborated

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Summary

Introduction

Due to the evolution and advancement in biometric system technology, face recognition has become very popular in image and computer vision [1]. In the last few years, the analysis based on face recognition has grown rapidly where building access control, video surveillance, and autonomous vehicles are the few instances of the concrete applications that are gaining more attention in industries [2,3,4]. Several approaches, such as holistic, local, and hybrid are developed for providing face image description with only fewer face image features or the whole facial features [5]. The regions of extracted face normally have low resolution (LR), and they are sensitive to illumination and pose variations; these flaws degrade subsequent recognition tasks

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