
Brain Tumor Detection by Fusing Machine Learning and Neural Network Practices
Publication year - 2019
Publication title -
international journal of innovative technology and exploring engineering
Language(s) - English
Resource type - Journals
ISSN - 2278-3075
DOI - 10.35940/ijitee.l1032.10812s19
Subject(s) - support vector machine , artificial neural network , artificial intelligence , computer science , fuzzy logic , identification (biology) , magnetic resonance imaging , brain tumor , pattern recognition (psychology) , functional magnetic resonance imaging , cluster analysis , value (mathematics) , machine learning , psychology , neuroscience , biology , medicine , radiology , botany , psychiatry
An unusual cell number or mass in a living being brain is termed as “brain tumor”. A living being’s brain is present in the skull and the skull is very stiff in nature. Any external development within such a rigid space can trigger serious difficulties in the living being body. Tumors in the brain of a living being may be cancerous or may not. Therefore, the main cure is the detections of the brain tumor, its magnitude, and place. This study paper proposes a combination of approaches which integrates statistical methods and machine-based training practices “Support for the Vector Machine (SVM)” and the “Artificial Neural Network (ANN)” to achieve greater efficiency in brain tumors and in their phase’s identification as well as their place within magnetic resonance imaging pictures. In order to divide the magnetic resonance imaging pictures, an enhanced variant of standard “K-means” with Fuzzy C-means and temperature-based K-means & altered fuzzy clustering means. The value of K in the suggested method is an enhanced value, therefore, assists the fuzzy c to mean technique to perceive the tumor area