Comparative Analysis of Brain Tumor Using Classifiers
نویسندگان
چکیده
The study of brain tumor occurs when irregular cells can be appeared within the brain. Therapeutic imaging plays a vital role in the decree of tumors. Previous imaging methods were found offensive and sometimes dangerous, such as pneumonic encephalography and cerebral angiography have been uncontrolled in favor of non-invasive, high-resolution techniques, can be used especially in (MRI). In upcoming methods, the boundary detection is used to identify the points which occur in the image at which the image clarification changes severely or in more proper it has discontinuities. Finally, different classifiers (KNN, ANN, DNN) can be used to examine data and distinguish patterns in order to categorize the tumor as usual or unusual with a good accuracy.
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تاریخ انتشار 2017