Rupiah Classification System using Segmented Fractal Texture Analysis and HSV Color Features

Authors

  • Ardhon Rakhmadi Universitas Pembangunan Nasional Veteran Jawa Timur
  • Putri Nur Rahayu Universitas Pembangunan Nasional Veteran Jawa Timur
  • Hazna At Thooriqoh Universitas Pembangunan Nasional Veteran Jawa Timur
  • Budi Mukhamad Mulyo Universitas Pembangunan Nasional Veteran Jawa Timur

DOI:

https://doi.org/10.62712/juktisi.v4i2.560

Keywords:

feature extraction, segmented fractal texture analysis, HSV, rupiah, banknotes

Abstract

The crime of forgery of rupiah currency can be anticipated by examining the rupiah banknotes based on traits or features contained on the original paper money. Features that are not owned by the rupiah banknote counterfeit is an ultraviolet sign that are owned by the original paper money. Rupiah banknotes feature extraction consists of a combination of color and texture  feature extraction. The proposed method is the HSV color histogram for color feature extraction and Segmented Fractal Texture Analysis (SFTA) for texture feature extraction. The combination of HSV and SFTA is expected to improve the performance of rupiah banknotes feature extraction. Moreover this paper will analyze feature redundancy in Two Threshold Decomposition Algorithm in SFTA Algorithm. Experimental results show the proposed method can reach 100% accuracy. Experiment results also show that redundant features can be removed without affecting the accuracy of of the system so that it can reduce the computational cost.

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Published

2025-08-18

How to Cite

Rakhmadi, A., Rahayu, P. N., Thooriqoh, H. A., & Mulyo, B. M. (2025). Rupiah Classification System using Segmented Fractal Texture Analysis and HSV Color Features. Jurnal Komputer Teknologi Informasi Sistem Informasi (JUKTISI), 4(2), 916–921. https://doi.org/10.62712/juktisi.v4i2.560