Review on MRI Brain Tumor Segmentation Approaches
Brain tumor segmentation is a significant area in medical applications. Early on analysis of brain tumors plays a significant part in increasing handling potential and improves the survival rate of the patients. Segmentation methods based on the manual of the brain tumors designed for cancer analysis, from huge number of MRI images created in clinical routine, is a complicated and time consumption task. There is a required designed for automatic brain tumor image segmentation. Presently amount of conventional methods are used for MRI-based brain tumor image segmentation. In this review paper, many segmentation techniques have been introduced such as Dual-force Convolutional Neural Networks (CNNs), kernel sparse coding, Local Independent Projection-based Classification (LIPC), Ensemble based Support Vector Machine (SVM), K means Integrated with Fuzzy C means (KIFCM) , global threshold segmentation and Rough-Fuzzy C-Means (RFCM). These methods are used and studied for segmentation with their merits and demerits.
Keywords: Brain Tumor, Rough-Fuzzy C-Means (RFCM), Manual segmentation and Magnetic Resonance Imaging (MRI)
Volume: 9 | Issue: 1
Issue Date: September , 2019