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IJSDR
INTERNATIONAL JOURNAL OF SCIENTIFIC DEVELOPMENT AND RESEARCH
International Peer Reviewed & Refereed Journals, Open Access Journal
ISSN Approved Journal No: 2455-2631 | Impact factor: 8.15 | ESTD Year: 2016
open access , Peer-reviewed, and Refereed Journals, Impact factor 8.15

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Impact factor: 8.15

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Paper Title: Comparative Analysis of MRI brain Cancer Classification using Hybrid Classifier (SVM-KNN)
Authors Name: Mr. Atul S. Dadhe , Prof. J. H. Patil , Miss. Geetanjali S. Gujarathi , Vijay V. Wasule
Unique Id: IJSDR1701011
Published In: Volume 2 Issue 1, January-2017
Abstract: ABSTRACT---- This research paper proposes a clever arrangement system to recognize typical and strange MRI mind picture. MRI is an imperative technique used for brain tumor detection and verdict. Study of medical MRI images by the radiologist is very difficult and time overwhelming task and correctness depending upon their experience. To overcome this problem, the automatic computer aided system becomes very obligatory. The proposed paper presents an automatic computer aided system for classification of malignant and benign tumor from the brain MRI. The texture features are extracted from MRI by using the highly accurate Gray Level Co-occurrence Matrix (GLCM) technique. The brain tumors are classified into malignant and benign using SVM and KNN classifiers. The proposed system gives an accuracy of 88.39% for SVM and 69.56% for KNN. To maintain a strategic distance from the human mistake, a computerized perceptive characterization framework is proposed which provides food the requirement for characterization of picture. One of the real reasons for death among individuals is Brain tumor. The odds of survival can be expanded in the event that the tumor is identified effectively at its initial stage. Attractive reverberation imaging (MRI) strategy is utilized for the investigation of the human mind. In this exploration work, grouping methods in view of Support Vector Machines (SVM) and K-Nearest Neighbor (KNN) are proposed and connected to mind picture arrangement. In this research paper we explore the hybrid classifier i.e. combination of two classifiers (SVM and KNN) so that the accuracy of the classifier will gets more. In this paper highlight extraction from MRI Images will be completed by dim scale, symmetrical and composition highlights. The primary target of this paper is to give a superb result (i.e. higher precision rate what’s more, lower blunder rate) of MRI cerebrum disease grouping utilizing SVM and KNN.
Keywords: Classification, MRI, SVM, KNN, PCA, Skull masking
Cite Article: "Comparative Analysis of MRI brain Cancer Classification using Hybrid Classifier (SVM-KNN)", International Journal of Science & Engineering Development Research (www.ijsdr.org), ISSN:2455-2631, Vol.2, Issue 1, page no.65 - 69, January-2017, Available :http://www.ijsdr.org/papers/IJSDR1701011.pdf
Downloads: 000337071
Publication Details: Published Paper ID: IJSDR1701011
Registration ID:170023
Published In: Volume 2 Issue 1, January-2017
DOI (Digital Object Identifier):
Page No: 65 - 69
Publisher: IJSDR | www.ijsdr.org
ISSN Number: 2455-2631

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