1. Segmentation of encephalon tumor by applying soft computing methodologies from magnetic resonance images
- Author
-
Prakash Kumar Sarangi, Srikanta Kumar Mohapatra, Bidush Kumar Sahoo, and Premananda Sahu
- Subjects
Soft computing ,medicine.diagnostic_test ,business.industry ,Computer science ,Process (computing) ,Magnetic resonance imaging ,General Medicine ,Image segmentation ,Fuzzy logic ,Identification (information) ,medicine ,Segmentation ,Computer vision ,Artificial intelligence ,business ,Histogram equalization - Abstract
Now days, the human being are affecting by so many diseases in all over the world. If we will consider about the tumor in the encephalon, then detection of tumor often involves radiological imaging. Radiological Imaging is used to check the spread of tumor and progress of treatment and also used to monitor cancer. The manual detection of the Encephalon tumor becomes a meticulous and chaotic task for the clinical experts. If the doctors or various departmental specialists want to eliminate the spoiled cancer areas from Magnetic Resonance Images, then it becomes very hectic and takes more time. The main aim of this work is to detect the encephalon tumor regions. Once the brain is going to be scan then it offers proficient and quick identification of encephalon tumor. To modernize the performance and abbreviate the intricacy involved in the image detection process in the proposed system as well as the Fuzzy CMean predicated image segmentation processes are used. Furthermore, to expand the variance of different images, particularly when the data are worn in image is signified beside different variance of images and then another technique has been implemented in the paper that is Histogram Equalization. The proposed method is completely automatic and tested on different kinds of brain MR images and proved as robust.
- Published
- 2023
- Full Text
- View/download PDF