Classification Approach for Brain Tumor Detection
Journal: International Journal of Computer Science and Mobile Computing - IJCSMC (Vol.8, No. 7)Publication Date: 2019-07-30
Authors : Mansha; Kiranpreet Kaur;
Page : 120-128
Keywords : HMM; Brain Tumor Detection; MRI; Classification;
Abstract
In the previous approach, weight based algorithm is used to classify the normal and cancer cells and it is been analyzed that weight based algorithm taken long time to classify the data. To classify the data in minimum amount of time HMM classifier is used for classification. The second issue with weight based algorithm is of accuracy. As due to weight calculation accuracy of classification is less which can be improved with the use of Bayesian classifier In the feature selection part on three features are used which are mass, density and margin . In the improvement more features like tissue color will be added which improve detection rate The simulation is performed in MATLAB and it is been analyzed that proposed technique performs well in terms of certain parameters.
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Last modified: 2019-07-31 20:33:11