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Research Article

EEO. 2021; 20(1): 3057-3060


A Review and Comparative Survey on an Efficient Brain Tumor Prediction by Using Two Pathway Group CNN Methodology with SVM for Tumor Classification in MRI Images

Madona Sahaai, G. Jothilakshmi*.




Abstract

In a brain tumor classification physician's ability and experience is considered as an important step which depends on ability and experience of physician's. An improvement in the current methods is suggested with the identification of brain tumors for suitable treatments. It is recommended for the radiologist and physicians to classify the type of tumor. An improved method of classification in identifying the type of tumor can be done automatically. In recent years, due to noninvasive imaging and good soft tissue contrast of NMR imaging and MRI based image analysis is used in tumor segmentation .In machine learning, SVM is a one type of algorithm which is used for classification or problem of regression which will use to create the pattern for future. Brain tumor identification and growth prediction system is developing and adaptive by an efficient algorithm which is classified by using MRI images.

Key words: Image Classification, MRI, Brain Tumor, Convolution Neural Network, Support Vector Machine.






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