The Different of Digital Image segmentation Techniques: A Review
Nirgish Kumar, Dr. Vivek Srivastava "The Different of Digital Image segmentation Techniques: A Review". International Journal of Computer Trends and Technology (IJCTT) V49(2):76-82, July 2017. ISSN:2231-2803. www.ijcttjournal.org. Published by Seventh Sense Research Group.
Abstract -
The different of digital image
segmentation is the way toward apportioning an
image into numerous portions, in order to change
the portrayal of an image into something that is
more important and simpler to examine. A few
universally useful calculations and strategies have
been produced for image segmentation. This paper
depicts the diverse segmentation systems utilized as
a part of the field of ultrasound and SAR Image
Processing. Firstly this paper examines and gathers
a portion of the advances utilized for image
segmentation. At that point, a bibliographical study
of current segmentation strategies is given in this
paper lastly broad propensities in image
segmentation are displayed.
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Keywords
Segmentation Techniques, MR Image,
Ultrasound Images.