A Comparative Analysis of Transfer Learning Architecture Performance on Convolutional Neural Network Models with Diverse Datasets

Deep learning is a branch of machine learning with many highly successful applications. One application of deep learning is image classification using the Convolutional Neural Network (CNN) algorithm. Large image data is required to classify images with CNN to obtain satisfactory training results....

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Bibliographic Details
Main Authors: Muhammad Daffa Arviano Putra, Tawang Sahro Winanto, Retno Hendrowati, Aji Primajaya, Faisal Dharma Adhinata
Format: Article
Language:Indonesian
Published: Program Studi Sistem Komputer 2023-05-01
Series:Komputika
Online Access:https://ojs.unikom.ac.id/index.php/komputika/article/view/8626
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Summary:Deep learning is a branch of machine learning with many highly successful applications. One application of deep learning is image classification using the Convolutional Neural Network (CNN) algorithm. Large image data is required to classify images with CNN to obtain satisfactory training results. However, this can be overcome with transfer learning architectural models, even with small image data. With transfer learning, the success rate of a model is likely to be higher. Since there are many transfer learning architecture models, it is necessary to compare each model's performance results to find the best-performing architecture. In this study, we conducted three experiments on different datasets to train models with various transfer learning architectures. We then performed a comprehensive comparative analysis for each experiment. The result is that the DenseNet-121 architecture is the best transfer learning architecture model for various datasets.
ISSN:2252-9039
2655-3198