Sistem Pengenalan Wajah pada Sistem KYC dengan Algoritma Local Binary Pattern Histogram

Authors

  • Hafidz Ubaidillah Universitas Muhammadiyah Gresik
  • Henny Dwi Bhakti Universitas Muhammadiyah Gresik

DOI:

https://doi.org/10.55606/juitik.v4i1.754

Keywords:

KYC, Face Recognition, API, Local Binary Pattern Histogram Algorithm

Abstract

With the increasing internet usage post-pandemic, ensuring the security of a fintech application becomes imperative. Bangbeli implements KYC procedures using facial recognition technology and stringent security protocols to verify identities and safeguard users' personal data in compliance with Bank Indonesia regulations. Utilizing Haar Cascade Classifier, Local Binary Pattern Histogram, and histogram equalization, an API (Application Programming Interface) has been created for facial training and prediction. These methods were chosen for their credibility, achieving an 88% accuracy with 33 samples and 90% with 10 samples. This study focuses on constructing an API for mobile services at Bangbeli, achieving 87.5% accuracy, 81.25% precision, 87.5% recall, and a 25% error rate. The model demonstrates good performance in facial recognition, with an acceptable error rate. Although precision is slightly lower than recall, it suggests the model is more inclined to identify most positive data with some errors rather than discard potentially identifiable faces.

References

AL-atraqchi, O. M. A. (2022). A proposed model for build a secure restful API to connect between server side and mobile application using Laravel Framework with flutter toolkits. Cihan University-Erbil Scientific Journal, 6(2), 28–35. https://doi.org/10.24086/cuesj.v6n2y2022.pp28-35

Bank Indonesia. (2021). Peraturan Bank Indonesia Nomor 23/6/PBI/2021 tentang Penyedia Jasa Sistem Pembayaran. Retrieved December 30, 2023, from Bank Indonesia website: https://www.bi.go.id/id/publikasi/peraturan/Pages/PBI_230621.aspx

Bempah, F., Lanini, A., & Syachdin, S. (2022). PENERAPAN PRINSIP MENGENAL NASABAH (KNOW YOUR CUSTOMER PRINCIPLES) SEBAGAI UPAYA PENCEGAHAN TINDAK PIDANA PENCUCIAN UANG (MONEY LAUNDRING) PADA PT. BANK RAKYAT INDONESIA (PERSERO) TBK KANTOR CABANG LUWUK. Tadulako Master Law Journal, 6(2), 154–171.

Christhalia, R., & Sally, J. N. (2022). PERLINDUNGAN KONSUMEN BANK TERHADAP TIDAK TANGGUNG JAWABNYA BANK DALAM KASUS PENIPUAN KODE ONE TIME PASSWORD DITINJAU DARI UNDANG-UNDANG NOMOR 8 TAHUN 1999 TENTANG PERLINDUNGAN KONSUMEN (studi putusan nomor 170 k/pdt. Sus-BPSK/2020). Jurnal Hukum Adigama, 5(2), 715–734.

Daquino, M., Heibi, I., Peroni, S., & Shotton, D. (2022). Creating RESTful APIs over SPARQL endpoints using RAMOSE - IOS Press. Semantic Web, 13(2), 195–213. https://doi.org/10.3233/SW-210439

Hapsari, N. S., Fatman, Y., & Isbandi, I. (2020). Implementasi Metode One Time Password pada Sistem Pemesanan Online. JURNAL MEDIA INFORMATIKA BUDIDARMA, 4(4), 930–939. https://doi.org/10.30865/mib.v4i4.2195

Harahap, M. A., & Adeni, S. (2020). TREN PENGGUNAAN MEDIA SOSIAL SELAMA PANDEMI DI INDONESIA. Professional: Jurnal Komunikasi Dan Administrasi Publik, 7(2), 13–23.

Heydarian, M., Doyle, T. E., & Samavi, R. (2022). MLCM: Multi-Label confusion matrix. IEEE Access, 10, 19083–19095. https://doi.org/10.1109/access.2022.3151048

Isima, N., & Khoirunnisa, S. A. (2023). Implementation of Know your Customer Principles in Syariah Banking. Kunuz: Journal of Islamic Banking and Finance, 3(1), 1–12. https://doi.org/10.30984/kunuz.v3i1.600

Jalolov, T. S. (2023, December 16). PROGRAMMING LANGUAGES, THEIR TYPES AND BASICS. Retrieved from Zenodo website: https://zenodo.org/doi/10.5281/zenodo.10394514

Pribadi, O. (2023). Aplikasi Pengenalan Wajah Menggunakan Algoritma Haar Cascade Classifier Dan Local Binary Pattern Histogram. Jurnal TIMES, XI(1), 40–47.

Putra, D. B., Hakim, M. Abd. M., & Nurdewanto, B. (2023). Implementasi Electronic-Know Your Customer pada aplikasi Fintech untuk meningkatkan keamanan akun user. Journal of Information System and Application Development, 1(2), 111–120. https://doi.org/10.26905/jisad.v1i2.11112

Salman, A., Hayaty, M., & Fajri, I. N. (2022). Facial images improvement in the LBPH algorithm using the histogram equalization method. JUITA : Jurnal Informatika, 10(2).

Saluky, S., Marine, Y., & Bahiyah, N. (2023). Penerapan Normalisasi Histogram untuk Peningkatan Kontras Pencahayaan pada Pengamatan Visual CCTV. Jurnal Informatika: Jurnal Pengembangan IT, 8(3), 188–192.

Singh, A. P., Manvi, S. K. S., Nimbal, P., & Shyam, G. K. (2019). Face recognition system based on LBPH algorithm. International Journal of Engineering and Advanced Technology, 8(5s), 26–30. https://doi.org/10.35940/ijeat.e1006.0585s19

Singh, P. (2021, July 12). Understanding Face Recognition using LBPH algorithm. Retrieved December 31, 2023, from Analytics Vidhya website: https://www.analyticsvidhya.com/blog/2021/07/understanding-face-recognition-using-lbph-algorithm/

Tenzin, S. (2022). PHP framework for web application development. IARJSET, 9(2). https://doi.org/10.17148/iarjset.2022.9218

Downloads

Published

2024-01-08

How to Cite

Hafidz Ubaidillah, & Henny Dwi Bhakti. (2024). Sistem Pengenalan Wajah pada Sistem KYC dengan Algoritma Local Binary Pattern Histogram. Jurnal Ilmiah Teknik Informatika Dan Komunikasi, 4(1), 141–154. https://doi.org/10.55606/juitik.v4i1.754

Similar Articles

1 2 > >> 

You may also start an advanced similarity search for this article.