Abstract

A tumor-infected brain is a dreadful illness. It is an area in the brain caused by cell development irregularity. An infected brain area might be challenging to identify and categorize using the MR imaging approach. Images of human brain anatomy are resulted using various imaging methods. Strange brain compositions are difficult to detect using standard image processing methods. MRI differentiates and explains the human neurological design. This research proposed an analytical method for detecting brain tumors. As a result, the brain tumor early diagnosis technique is crucial for reducing mortality rates. We propose a computer-aided radiology system that will analyze brain tumors from MRI data to diagnosis. We constructed a model that uses FCM and Kernel FCM to segment the MRI images and DWT to extract features and the SVM network to classify tumors.

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