Volume 20 No 8 (2022)
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Brain Tumor Detection by Incorporating Hyperparameter Optimization in Convolutional Neural Network
S. Shargunam , Dr. G. Rajakumar
Abstract
In modern days, recognition of brain tumors has ended up being a breathtaking challenge in scientific
endeavors. Because of its common image quality and the fact that it does not require ionizing radiation, MRI is
frequently used. Diagnosis of a brain tumor is an extremely troublesome undertaking for specialists to
distinguish at the beginning period. The objective is to recognize the brain tumor from MRI images utilizing
Image processing strategies. The proposed work incorporates Extraction to assess tumor to be the noteworthy
class that would be glioma, meningioma, and pituitary. The brain tumor earnestness has been assessed using
Convolutional Neural Network figuring which gives us exact results by playing out the hyperparameter tuning
components. Experimental findings demonstrate the superiority of our profound learning approach to the
conventional condition techniques. Optimizing the hyperparameters in Convolutional Neural Networks (CNN)
takes a lot of time for many researchers and professionals. Experts must configure a collection of
hyperparameter options using tuning techniques to obtain superior performance hyperparameters. The best
results of this configuration are thereafter modeled and implemented in CNN. Using the grid search tuning
strategy the best hyperparameter for the dataset has been found by comparing three Optimizers and Batch
size, learning rate, and momentum for Hyperparameter tuning. The system's performance and accuracy are
enhanced by fine-tuning the parameters. When compared to other hyperparameters, the best optimizer,
stochastic gradient descent (SGD), with a batch size of 64 and a learning rate of 0.001, achieved the maximum
accuracy of 78.21%.
Keywords
Deep learning, glioma tumor, neural networks, tumor detection, convolutional neural network, hyperparameter
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