Research Article |
Brain Tumor Classification Using Machine Learning and Deep Learning Algorithms
Author(s): Saran Raj Sowrirajan1 and Surendiran Balasubramanian2
Published In : International Journal of Electrical and Electronics Research (IJEER) Volume 10, Issue 4
Publisher : FOREX Publication
Published : 15 November 2022
e-ISSN : 2347-470X
Page(s) : 999-1004
Abstract
Early identification and diagnosis of brain tumors have been a difficult problem. Many approaches have been proposed using machine learning techniques and a recent study has explored deep learning techniques which are the subset of machine learning. In this analysis, Feature extraction techniques such as GLCM, Haralick, GLDM, and LBP are applied to the Brain tumor dataset to extract different features from MRI images. The features which have been extracted from the MRI brain tumor dataset are trained using classification algorithms such as SVM, Decision Tree, and Random Forest. Performances of traditional algorithms are analyzed using the accuracy metric and stated that LBP with SVM produces better classification accuracy of 84.95%. Brain tumor dataset is input to three-layer convolutional neural network and performance has been analyzed using accuracy which is of 93.10%. This study proves that CNN performs well over the machine learning algorithms considered in this work.
Keywords: Brain Tumor
, Deep Learning
, Machine Learning
, GLDM
, HARALICK
, GLCM
, Random Forest
, Decision Tree
, LBP
, SVM
, CNN
.
Saran Raj Sowrirajan*, National Institute of Technology Puducherry, India; Email: sarandilip.er@gmail.com
Surendiran Balasubramanian, National Institute of Technology Puducherry, India; Email: surendiran@nitpy.ac.in
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Saran Raj Sowrirajan and Surendiran Balasubramanian (2022), Brain Tumor Classification Using Machine Learning and Deep Learning Algorithms. IJEER 10(4), 999-1004. DOI: 10.37391/IJEER.100441.