An Efficient Classifier for Brain Tumor Classification

نویسندگان

  • R. Anjali
  • S. Priya
چکیده

Today world the brain tumor is life threatening and the main reason for the death. The growth of abnormal cells in brain leads to brain tumor. Brain tumor is categorized into malignant tumor and benign tumor. Malignant is cancerous whereas Benign tumor is non-cancerous. Diagnosing at earlier stage can save the person. It is actually a great challenge to find the brain tumor and classifying its type. The proposed system has many stages like noise removal, textural feature enhancement, segmentation, feature selection and Classification phase. The enhanced system is more accurate in classifying the tumor regions.

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تاریخ انتشار 2017