1. SABA KHAN - Department of Electrical Engineering, CECOS University of Information Technology & Emerging Sciences,
Peshawar, Pakistan.
2. KHALID REHMAN - Department of Electrical Engineering, CECOS University of Information Technology & Emerging Sciences,
Peshawar, Pakistan.
Brain tumours are an increasing global epidemic, claiming millions of lives each year. Misdiagnosis can result in needless therapy and reduced life expectancy. Doctors have used computer-based diagnostic techniques such as DenseNet201 and the Gabor Filter to produce accurate diagnoses. In this work, SVM was used to classify independent features, and essential features were collected from an MRI image dataset using the DenseNet201 algorithm and Gabor filter. Deep convolutional layers outperform standard techniques in terms of extracting unique characteristics from target areas. An MRI dataset of 7023 brain tumour pictures from the Kaggle website was utilised to classify features using SVM. The hybrid approach of DenseNet201 and Gabor Filter produced the best overall results, with 98.02% precision, 98.01% accuracy, and 98.01% F1 score.
Support Vector Machines; Magnetic Resonance Imagiging (MRI) Data Set; Computer Aided Diagnosis Tools; Convolution Layers; Densenet201 Algorithm; Gabor Filter; Kaggle Website MRI Datasets.