The death rate due to tumor has been increasing enormously over the past
three decades. This fact increases the importance of research in the
medical field, to identify brain pathologies for tumor segmentation and
detection, which helps the neurosurgeon to diagnose brain disease and to
set up most suitable treatment for the pathology. Normally, manual
segmentation of brain image is a tedious and laborious task due to the
processing of large amount of data and also due to the presence of
minute brain lesions. Thus a completely automated segmentation system
has become a real challenging in medical image processing, which has
fascinated many researchers in this field, in recent years. The
recommended system focus on all possible outcomes, that can be used to
address the brain segmentation problems in multi modality MR images,
which is widely used imaging technique for its high quality. More
precisely, the classifier used in this recommended system is Support
Vector Machine (SVM), which is the most prevalent classification method
used recently, along with a combination of Wrapper based Genetic
Algorithm.