Image Processing Techniques for identifying tumors in an MRI image
- URL: http://arxiv.org/abs/2103.15152v1
- Date: Sun, 28 Mar 2021 15:18:38 GMT
- Title: Image Processing Techniques for identifying tumors in an MRI image
- Authors: Jacob John
- Abstract summary: Digital assignment surveys the different image processing techniques used in Automated Tumor Detection (ATD)
This assignment initiates the discussion with a comparison of traditional techniques such as Morphological Tools (MT) and Region Growing Technique (RGT)
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Medical Resonance Imaging or MRI is a medical image processing technique that
used radio waves to scan the body. It is a tomographic imaging technique,
principally used in the field of radiology. With the advantage of being a
painless diagnostic procedure, MRI allows medical personnel to illustrate clear
pictures of the anatomy and the physiological processes occurring in the body,
thus allowing early detection and treatment of diseases. These images, combined
with image processing techniques may be used in the detection of tumors,
difficult to identify with the naked eye. This digital assignment surveys the
different image processing techniques used in Automated Tumor Detection (ATD).
This assignment initiates the discussion with a comparison of traditional
techniques such as Morphological Tools (MT) and Region Growing Technique (RGT).
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