Jurnal Saintekom : Sains, Teknologi, Komputer dan Manajemen
Vol 14 No 2 (2024): September 2024

Klasifikasi Kualitas dan Kematangan Pisang Cavendish Menggunakan Convolutional Neural Network

Hastungkoro, Arya Widya (Unknown)
Putro Wicaksono, Aditya Dwi (Unknown)
Diah Rosita, Yesy (Unknown)



Article Info

Publish Date
30 Sep 2024

Abstract

This research aims to develop a classification model using Convolutional Neural Networks (CNN) to determine the ripeness and quality of Cavendish bananas. The model classifies bananas into four categories: good quality unripe (MHBS), poor quality unripe (MHBK), good quality ripe (MGBS), and poor quality ripe (MGBK), using a total of 1,000 images. In this study, the classification process of the ripeness and quality of Cavendish bananas was carried out based on automatic feature extraction using CNN,after which an evaluation was carried out using a confusion matrix to assess model performance. The research developed 36 models with variations in parameters such as the number of epochs, batch size, and dataset split. The analysis results indicate that the number of epochs significantly affects the model's accuracy, with an increase in the number of epochs leading to higher accuracy. However, the dataset split scenario and batch size do not have a significant impact on the model's overall accuracy. Evaluation shows that the highest accuracy of 95% was achieved by the model with a 90:10 dataset split, a batch size of 16, and 20 epochs.

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Journal Info

Abbrev

saintekom

Publisher

Subject

Computer Science & IT Decision Sciences, Operations Research & Management

Description

Jurnal Saintekom adalah singkatan dari Sains, Teknologi, Komputer dan Manajemen, merupakan jurnal ilmiah yang berfungsi sebagai media mengkomunikasikan ide, gagasan dan pemikiran seputar kajian aktual tentang sains, teknologi, komputer dan manajemen antarkademisi dan ...