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

Muhammad Daffa Arviano Putra, Tawang Sahro Winanto, Retno Hendrowati, A. Primajaya, F. Adhinata
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Abstract

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.
不同数据集卷积神经网络模型迁移学习架构性能的比较分析
深度学习是机器学习的一个分支,有许多非常成功的应用。深度学习的一个应用是使用卷积神经网络(CNN)算法进行图像分类。使用CNN对图像进行分类需要大量的图像数据才能获得令人满意的训练结果。然而,即使使用较小的图像数据,也可以通过迁移学习架构模型来克服这一问题。有了迁移学习,模型的成功率可能会更高。由于有许多迁移学习体系结构模型,因此有必要比较每个模型的性能结果,以找到性能最好的体系结构。在这项研究中,我们在不同的数据集上进行了三个实验,以训练具有不同迁移学习架构的模型。然后,我们对每个实验进行了全面的比较分析。结果表明,DenseNet-121体系结构是各种数据集的最佳迁移学习体系结构模型。
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