Brain haemorrhage classification from CT scan images using fine-tuned transfer learning deep features
by Arpita Ghosh; Badal Soni; Ujwala Baruah
International Journal of Business Intelligence and Data Mining (IJBIDM), Vol. 24, No. 2, 2024

Abstract: Classification of brain haemorrhage is a challenging task that needs to be solved to help advance medical treatment. Recently, it has been observed that efficient deep learning architectures have been developed to detect such bleeding accurately. The proposed system includes two different transfer learning strategies to train and fine-tune ImageNet pre-trained state-of-the-art architecture such as that VGG 16, Inception V3 and DenseNet121. The evaluation metrics have been calculated based on the performance analysis of the employed networks. Experimental results show that the modified fine-tuned Inception V3 performed well and achieved the highest test accuracy.

Online publication date: Thu, 01-Feb-2024

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