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Journal ArticleOpen Access

MobDenseNet: A hybrid deep learning model for brain tumor classification using MRI

Author Affiliations
Bangladesh University of Engineering and Technology, Green University of Bangladesh
Published InArray
Year2025
Citations16

Abstract

This paper presents MobDenseNet, an improved deep learning model that assists medical practitioners in diagnosing brain tumors accurately. The proposed MobDenseNet is developed using the concepts of existing deep learning models: MobileNetV1 and DenseNet; the model incorporates hyperparameter fine-tuning and feature fusion ensemble during the feature extraction phase, consolidating layers like batch normalization, dense layers in the classification step to classify brain tumors. The classification is done into multiple classes, including, gliomas, meningiomas, pituitary, and healthy brain. The performance of the proposed model is assessed on two benchmark datasets. The experiments consider 2757 training and 307 testing images for the first dataset of 3064 MRI images, available on Figshare, having classes of glioma, meningioma, and pituitary. The experiment for the…
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