Deep Learning Transfer Methods for Biomedical Classification of Images


Adel Al-Janabi
University of Kufa, Najaf, Iraq
DOI : https://doi.org/10.58806/ijirme.2024.v3i3n24

Abstract

Research using computers has been carried out on the effectiveness of applying deep learning transfer methods to solve the problem of identifying human brain tumors using MRI imaging. Various deep learning and fine-tuning methodologies of models have been proposed and implemented. The deep convolution networks MobileNetV2, VGG-16, Xception and ResNet-50, trained on the ImageNet image set, were used as basic models. A deep convolutional neural network 2D-CNN has also been developed and trained. A computer study of the performance indicators revealed that the fine-tuning method was effective On an enlarged data set, the Xception model outperformed other deep learning models in terms of accuracy: the clarity with which brain tumors are classified using MRI images was 94%, precision 97.7%, recall 94.01%, f1 score 96%, AUC 96.90%.

Keywords:

brain tumor, MRI images, Statistical modeling, convolution neural networks, transfer of deep learning

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