Discrete Lion Swarm Optimization Algorithm for face recognition

Discrete Lion Swarm Optimization Algorithm for face recognition

Authors

  • Shuang You University of Science and Technology of China

Keywords:

DBN, Extraction, Face Recognition, Feature Classification, Optimization Method

Abstract

In various applications, face recognition plays an important role such as identification of a person, biometrics via their Closed-Circuit Television (CCTV) cameras, identity cards and etc. Besides, various biometrics like palm print, fingerprint, iris, etc plays a significant role. Therefore, in this research, a face recognition technique is developed for the classification phase as well as feature extraction. Moreover, Discrete Lion Swarm Optimization Algorithm (DLSA) is developed Deep Belief Network (DBN) for face recognition. At first, in the database, the images experience feature extraction here the feature like m-Co-HOG, Kernel based Scale Invariant Feature Transform (K-SIFT) , besides with Active Appearance Models (AAM) features which are extracted from the image. Subsequently, developed DLSA-DBN is used for the classification. The simulation of the developed technique is performed by exploiting the CVL database. In addition, the developed model outperforms the conventional models for False Acceptance Rate (FAR), accuracy, and False Rejection Rate (FRR), correspondingly.

References

Jyothi S. NayakM. Indiramma,"An approach to enhance age invariant face recognition performance based on gender classification",Journal of King Saud University - Computer and Information Sciences Available online, 14 January 2021.

Yanfei LiuJunhua Chen,"Unsupervised face Frontalization for pose-invariant face recognition", Image and Vision Computing,13 December 2020.

Yinghui ZhuYuzhen Jiang,"Optimization of face recognition algorithm based on deep learning multi feature fusion driven by big data",Image and Vision Computing,18 September 2020.

Leila BoussaadAldjia Boucetta,"An effective component-based age-invariant face recognition using Discriminant Correlation Analysis",Journal of King Saud University - Computer and Information Sciences Available online, 25 August 2020.

Serign Modou BahFang Ming,"An improved face recognition algorithm and its application in attendance management system",Array, 26 December 2019.

A.U. Batur, M.H. Hayes, "Adaptive active appearance models", IEEE Transactions on Image Processing, vol. 14, no. 11, pp. 1707 - 1721, Nov. 2005.

Hima Bindu, Manjunathachari K., "Hybrid feature descriptor and probabilistic neuro-fuzzy system for face recognition", Sensor Review, vol. 38, no. 3, pp.269-281, 2018.

Bc. Jan Vojtech, "Deep Neural Networks and Their Implementation", Thesis, Charles University in Prague, 2016.

CVL database, taken from "http://www.lrv.fri.uni-lj.si/facedb.html", accessed on May 2018.

B. R. Rajakumar,"The Lion's Algorithm: A New Nature-Inspired Search Algorithm", Procedia Technology 2012.

K.Srinivas,"Prediction of E-Learning Efficiency by Deep Learning in EKhool Online Portal Networks",

Multimedia Research, vol 3, no. 4, October 2020.

Arvind Madhukar Jagtap,"Developing Deep Neural Network for Learner Performance Prediction in EKhool Online Learning Platform", Multimedia Research, vol. 3, no. 4, October 2020.

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Published

08-10-2021

How to Cite

Shuang You. (2021). Discrete Lion Swarm Optimization Algorithm for face recognition : Discrete Lion Swarm Optimization Algorithm for face recognition . Multimedia Research, 4(3). Retrieved from https://publisher.resbee.org/admin/index.php/mr/article/view/12