MRI-based Brain Tumor Image Classification Using CNN

Khan, Sher Shermin Azmiri and Prova, Ayesha Aziz and Acharjee, Uzzal Kumar (2023) MRI-based Brain Tumor Image Classification Using CNN. Asian Journal of Research in Computer Science, 15 (1). pp. 1-10. ISSN 2581-8260

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Abstract

Though all brain tumors are not cancerous but they caused a critical disease produced by irrepressible and unusual dividing of cells. For the case of Medical diagnostics of many diseases, the health industry needs help, the current development in the arena of deep learning has assisted to detect diseases. In recent years medical image classification has gained remarkable attention. The most well-known neural network model for image classification problems is the Convolutional Neural Network (CNN). CNN is the frequently employed machine-learning algorithm that is used in Visual learning and Image Recognition research. It is considered to derive features adaptively through convolution, activation, pooling, and fully connected layers. In our paper, we present the convolutional neural network method to determine cancerous and non-cancerous brain tumors. We also used Data Augmentation and Image Processing to classify brain (Magnetic Resonance Imaging (MRI). We used two significant steps in our proposed system. First, different image processing techniques are used to preprocess the images and secondly we classify the preprocessed image using CNN. Brain tumor classification is a process of identifying and separating the cancerous and non-cancerous brain tissues and labeling them automatically. We use the famous machine learning algorithms Convolutional Neural Network which is broadly employed for image classifications. This experiment is conducted on a dataset of 2065 images. In our dataset number of training, examples are 1445, the number of validation examples is 310, and the number of testing example is 310. We also used data augmentation to raise the number of the dataset. We achieved a high testing accuracy of 94.39%. The proposed system displayed sufficient accuracy on the dataset and beat many of the noticeable present methods.

Item Type: Article
Subjects: Open Library Press > Computer Science
Depositing User: Unnamed user with email support@openlibrarypress.com
Date Deposited: 14 Jan 2023 12:17
Last Modified: 14 Jan 2023 12:17
URI: https://openlibrarypress.com/id/eprint/275

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