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Information ; 14(3):192, 2023.
Article in English | ProQuest Central | ID: covidwho-2275231

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.

2.
International Journal of Sociotechnology and Knowledge Development ; 14(1), 2022.
Article in English | Scopus | ID: covidwho-2264182

ABSTRACT

COVID-19 is a pathogenic viral infection caused by severe acute respiratory syndrome corona virus 2 (SARS-CoV-2), which emerged in Wuhan, China in December 2019 and has spread to several countries of the world resulting in economic hardship and travel restrictions. This paper presents findings on the baseline study of COVID-19 and biometric technologies. The study included succinct discussions on biometric technologies prior to and since outbreak of COVID-19 and an online survey involving 2438 randomly selected individuals via questionnaire that centered on the world s economy with daily application of biometric technologies. The questionnaire featured indices on biometric technologies and global security, the rating of each biometric mode in the global security performance scale among others. Analysis of data from the survey established the paradigm shift in biometric applications from contact-based to contact-free since the outbreak of the disease, low risk level between COVID-19 and biometric technologies and diminishing cash flow in biometric market. © 2022 Information Resources Management Association. All rights reserved.

3.
2022 Asia Conference on Algorithms, Computing and Machine Learning, CACML 2022 ; : 505-511, 2022.
Article in English | Scopus | ID: covidwho-2051936

ABSTRACT

Masked face recognition, a non-contact biometric technology, has attracted much attention and developed rapidly during the coronavirus disease 2019 (COVID-19) outbreak. The existing work trains the masked face recognition model based on a large number of 2D masked face images. However, in practical application scenarios, it is difficult to obtain a large number of masked face images in a short period of time. Therefore, combined with 3D face recognition technology, this paper proposes a masked face recognition model trained with non-masked face images. In this paper, we locate and segment the complete face region and the face region not occluded by masks from the face point clouds. The geometric features of the 3D face surface, namely depth, azimuth, and elevation, are extracted from the above two regions to generate training data. The proposed masked face recognition model based on vision Transformer divides the complete faces and part of the faces into sequence images, and then captures the relationship between the image slices to compensate for the impact caused by the lack of face information, thereby improving the recognition performance. Comparative experiments with the state-of-the-art masked face recognition work are carried out on four databases. The experimental results show that the recognition accuracy of the proposed model is improved by 9.86% on Bosphorus database, 16.77% on CASIA-3D FaceV1 database, 2.32% on StirlingESRC database, and 34.81% on Ajmal main database, respectively, which verifies the effectiveness and stability of the proposed model. © 2022 IEEE.

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