Ethnicity Detection with Convolutional Neural Network (CNN): Bangladesh Perspectives

Authors

  • Sultana Tasnim Jahan Computer Science and Engineering University of Chittagong Chattogram, Bangladesh
  • Rashed Mustafa Computer Science and Engineering University of Chittagong Chattogram, Bangladesh https://orcid.org/0000-0001-5123-194X

DOI:

https://doi.org/10.54536/ajiri.v3i4.3772

Keywords:

Ethnicity detection, Bangladesh perspective, CNN, Computer Vision, Facial Recognition

Abstract

Ethnicity detection, or the automatic determination of people's ethnic backgrounds using visual data, has become important in a number of disciplines, including social sciences, demographics, and computer vision. With a focus on Bangladesh's complex cultural landscape, we describe in this paper a novel method for ethnicity detection using convolutional neural networks (CNNs). We gathered a dataset of photographs depicting members of the three main ethnic groups living in the Chittagong hill neighborhood: Chakma, Marma, and Tripura. Utilizing the DenseNet121 model's robust feature extraction skills, we customized the architecture to meet the needs of our particular ethnicity detection application. A wide range of performance indicators were used to train and assess our unique CNN model. The outcomes illustrate accurate ethnicity detection technology's potential for identifying and resolving social inequities while showcasing a promising level of accuracy. To address possible biases in the model's prediction, ethical considerations are also covered. Overall, this work advances knowledge of Bangladesh's ethnic variety and demonstrates the potential of CNNs for ethnicity detection. The results provide up new avenues for investigation and applications that advance a more diverse and inclusive society.

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References

Alghaili, M., Xiao, Z., & AlBdairi, A. J. A. (2020). Identifying ethnics of people through face recognition: A deep CNN approach. 2017 IEEE 8th International Conference on Awareness Science and Technology (iCAST 2017). Hindawi, Scientific Programming, 2020, Article ID 6385281.

Belcar, D., Grd, P., & Tomičić, I. (2022). Automatic ethnicity classification from middle part of the face using convolutional neural networks. Informatics. https://mdpi.com/journal/informatics

Deng, Y., Chen, H., & Zhang, S. (2016). Where am I from? – East Asian ethnicity classification from facial recognition. Semantic Scholar.

Nguyen, T., Vo, T., & Le, C. T. (2018). Race recognition using deep convolutional neural networks. Symmetry. https://mdpi.com/about/journals

Satonkar, S. S., Kurhe, A. B., & Khanale, B. P. (2012). Face recognition using principal component analysis and linear discriminant analysis on holistic approach in facial images database. IOSR Journal of Engineering, 2(15–23).

Turk, M. A., & Pentland, A. P. (1991). Face recognition using eigenfaces. IEEE, Maui, HI, USA (pp. 586–591).

Venkat, N., & Srivastava, S. (2018). Ethnicity detection using deep convolutional neural networks. ResearchGate. https://www.researchgate.net/publication/32935541

Yan, J. L., Zhang, L., Wu, Y., Guo, P., Zhang, F., Tang, S., ... & Xu, L. (2017, November). Research on face recognition method based on deep learning in natural environment. In 2017 IEEE 8th International Conference on Awareness Science and Technology (iCAST) (pp. 501-506). IEEE.

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Published

2024-10-08

Issue

Section

Conference Paper

How to Cite

Jahan, S. T., & Mustafa, R. . (2024). Ethnicity Detection with Convolutional Neural Network (CNN): Bangladesh Perspectives. American Journal of Interdisciplinary Research and Innovation, 3(4), 5-12. https://doi.org/10.54536/ajiri.v3i4.3772

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