A Systematic Literature Review on Human Ear Biometrics: Approaches, Algorithms, and Trend in the Last Decade

Author:

Oyebiyi Oyediran George1,Abayomi-Alli Adebayo1ORCID,Arogundade Oluwasefunmi ‘Tale1,Qazi Atika2,Imoize Agbotiname Lucky34ORCID,Awotunde Joseph Bamidele5ORCID

Affiliation:

1. Department of Computer Science, Federal University of Agriculture, Abeokuta 110124, Nigeria

2. Centre for Lifelong Learning, Universiti Brunei Darussalam, Jalan Tungku Link, Gadong BE1410, Brunei

3. Department of Electrical and Electronics Engineering, Faculty of Engineering, University of Lagos, Akoka, Lagos 100213, Nigeria

4. Department of Electrical Engineering and Information Technology, Institute of Digital Communication, Ruhr University, 44801 Bochum, Germany

5. Department of Computer Science, Faculty of Information and Communication Sciences, University of Ilorin, Ilorin 240003, Nigeria

Abstract

Biometric technology is fast gaining pace as a veritable developmental tool. So far, biometric procedures have been predominantly used to ensure identity and ear recognition techniques continue to provide very robust research prospects. This paper proposes to identify and review present techniques for ear biometrics using certain parameters: machine learning methods, and procedures and provide directions for future research. Ten databases were accessed, including ACM, Wiley, IEEE, Springer, Emerald, Elsevier, Sage, MIT, Taylor & Francis, and Science Direct, and 1121 publications were retrieved. In order to obtain relevant materials, some articles were excused using certain criteria such as abstract eligibility, duplicity, and uncertainty (indeterminate method). As a result, 73 papers were selected for in-depth assessment and significance. A quantitative analysis was carried out on the identified works using search strategies: source, technique, datasets, status, and architecture. A Quantitative Analysis (QA) of feature extraction methods was carried out on the selected studies with a geometric approach indicating the highest value at 36%, followed by the local method at 27%. Several architectures, such as Convolutional Neural Network, restricted Boltzmann machine, auto-encoder, deep belief network, and other unspecified architectures, showed 38%, 28%, 21%, 5%, and 4%, respectively. Essentially, this survey also provides the various status of existing methods used in classifying related studies. A taxonomy of the current methodologies of ear recognition system was presented along with a publicly available occlussion and pose sensitive black ear image dataset of 970 images. The study concludes with the need for researchers to consider improvements in the speed and security of available feature extraction algorithms.

Funder

Nigerian Petroleum Technology Development Fund

German Academic Exchange Service (DAAD) through the Nigerian-German Postgraduate Program

Publisher

MDPI AG

Subject

Information Systems

Reference204 articles.

1. World Bank Group (2016). Identification for Development Strategic Framework, World Bank Group. Working Paper.

2. Atick, J. (2016). The Identity Ecosystem of Rwanda. A Case Study of a Performant ID System in an African Development Context. ID4Africa Rep., 1–38. Available online: https://citizenshiprightsafrica.org/the-identity-ecosystem-of-rwanda-a-case-study-of-a-performant-id-system-in-an-african-development-context/.

3. Saranya, M., Cyril, G.L.I., and Santhosh, R.R. (2016, January 3–5). An approach towards ear feature extraction for human identification. Proceedings of the International Conference on Electrical, Electronics and Optimization Techniques (ICEEOT 2016), Chennai, India.

4. A review of biometric technology along with trends and prospects;Unar;Pattern Recognit.,2014

5. Emersic, Z., Stepec, D., Struc, V., and Peer, P. (June, January 30). Training Convolutional Neural Networks with Limited Training Data for Ear Recognition in the Wild. Proceedings of the International Conference on Automatic Face Gesture Recognition, Washington, DC, USA.

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