Klasifikasi Tingkat Kematangan Nanas Berdasarkan Citra Warna dengan Metode SVM
DOI:
https://doi.org/10.26623/transformatika.v23i2.13235Abstract
Penentuan kematangan nanas manual bersifat subjektif dan tidak konsisten. Penelitian ini bertujuan membangun sistem klasifikasi nanas (Matang, SetengahMatang, Mentah) yang objektif menggunakan Support Vector Machine (SVM) berbasis citra warna. Metode ini menggunakan 2044 citra augmentasi. Fitur warna mentah (30.000 fitur) diekstraksi dan direduksi menggunakan Principal Component Analysis (PCA) menjadi 51 komponen untuk mengatasi overfitting. Model SVM (RBF) dioptimalkan dengan GridSearchCV. Hasilnya, model SVM (RBF Tuned) terpilih mencapai akurasi 81.78% pada data uji, secara signifikan mengungguli KNN (75.79%). Model ini mencapai "Good Fit" dengan selisih overfit rendah (11.04%). Kesimpulannya, kombinasi SVM dan PCA valid dan efektif.
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Copyright (c) 2026 Zulkhan Arbi Toyibun Abdillah, Adi Prihandono

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