Segmentation of Brain Tumor using Deep Learning Methods
Jayaraj Ramasamy, Ruchi Doshi, Kamal Kant Hiran
Abstract
In the world of medical imaging, detecting brain tumors is a difficult challenge. Manual segmentation of brain tumors from a vast number of MRI images for diagnosis was a complex and time-consuming task. Automatic brain tumor image segmentation serves a role. The process of detecting or identifying a brain tumor entails segmenting the brain image, extracting brain characteristics, and classifying abnormalities in the MRI brain image. The most popular method for diagnosing a brain tumor is an MRI. Deep learning algorithms make it possible to process vast amounts of MRI-based image data quickly. In this paper we have a look at field of brain tumor segmentation methods as applicable to deep neural network. We provide comprehensive coverage of the top approaches and summarize the categories, types and different architecture of deep learning architecture for segmentation.