STUDY OF IMAGE SEGMENTATION METHODS WITH MRI IMAGES

Authors:

Mohanapriya G.,Muthukumar S.,Santhosh Kumar S.,

DOI NO:

https://doi.org/10.26782/jmcms.2024.06.00002

Keywords:

Computer Vision,Denoising,Digital image processing,Neutrosophic set,Segmentation,

Abstract

Digital image processing is the use of a digital computer to process digital images. Image processing transforms input images into digital form for certain operations to obtain useful information. Segmentation is a well-known process used in image processing that partitions input images into different regions. Image segmentation is a sub-area of computer vision and digital image processing for grouping similar segments of an image under respective class labels. Several methods were performed with neutrosophic sets on dissimilar image-processing domains. However, the denoising and segmentation were not carried out accurately with minimal time complexity. To address these issues, many image segmentation methods are reviewed.

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