Klasifikasi Kematangan Buah Pepaya Menggunakan Algoritma Support Vector Machine

Authors

  • Zaqila Amanda Universitas Almuslim
  • Imam Muslem Universitas Almuslim
  • Fitri Rizani Universitas Almuslim

Keywords:

Papaya, Ripeness, Support Vector Machine.

Abstract

Manually determining papaya ripeness is often inaccurate and subjective. Therefore, a Support Vector Machine (SVM) algorithm is needed to improve the accuracy of papaya ripeness classification. The problem studied is how to apply SVM to accurately classify papaya ripeness. The research methodology includes papaya image capture, image preprocessing, color feature extraction, and classification using SVM. This study focused on three ripeness categories: unripe, semi-ripe, and ripe. The results showed that the SVM method was able to classify unripe papaya with 67% accuracy, semi-ripe papaya with 22% accuracy, and ripe papaya with 70%. The conclusion of this study is that SVM is quite effective in processing color information for papaya ripeness classification and has potential for application in the agricultural industry

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Published

2026-03-04

How to Cite

Amanda, Z., Muslem, I., & Rizani, F. (2026). Klasifikasi Kematangan Buah Pepaya Menggunakan Algoritma Support Vector Machine. Aceh Journal of Computer Science , 3(1), 96–102. Retrieved from https://jurnal.fikompublisher.com/ilka/article/view/36

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