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Medical Electronics

Magnitude Normalized and OTSU Intensity based Brain Tumor Detection Using Magnetic Resonance Images

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Pages 5079-5089 | Published online: 12 Oct 2021
 

Abstract

Brain tumor is a deadly disease and its categorization is challenging due to the diversified characteristics of tumor cells. Currently, computer-aided techniques for brain tumor identification in the early stages are proposed with magnetic resonance imaging (MRI). In recent pre-trained models, features are obtained from bottom layers that vary from natural images to medical images. Moreover, attributable to disequilibrium and complication of noise and intensity of these lesions of brain tumors in MRI is yet considered to be the laborious strategy. To resolve these issues, an intensity-based segmentation method called, Magnitude Normalized Filtering and Otsu Intensity-based segmentation (MNF-OIS) is utilized. First, with the Brain MRI images provided as input, normalized pre-processed images are obtained by utilizing the Magnitude Normalized Saddle Median Filtering model. Next, Otsu Intensity-based segmentation is applied to the pre-processed image to obtain Convergence optimized segmented image. With the resultant segmented image testing on brain MRI images are made for brain tumor identification. MNF-OIS method is evaluated in terms of tumor detection time, convergence time, and accuracy. The experimental outcomes verify that the MNF-OIS method improved brain tumor detection accuracy by 7%, reduced the convergence time by 22%, and minimized tumor detection time by 32% as compared to existing Deep learning convolutional neural networks and DeepSeg, respectively.

Disclosure statement

No potential conflict of interest was reported by the author(s).

Additional information

Funding

The author(s) reported there is no funding associated with the work featured in this article.

Notes on contributors

V. Vinay Kumar

V Vinay Kumar is pursuing his PhD from Sathyabama University, Chennai, in the field “Digital image processing and deep learning”. He received his Bachelor of Engineering in electronics and communication engineering from Osmania University, Hyderabad in 1993. He received his Master of Technology in digital systems and computer electronics from Jawaharlal Nehru Technological University, Anantapur in 2010. He is currently working as an associate professor in Anurag University (Formerly CVSR Engineering College) Ghatkesar. He has 26 years of teaching experience. He has 4 patents and he has published in two national and seven international journals.

P. Grace Kanmani Prince

P Grace Kanmani Prince is an associate professor, working in the Department of Electronics and Communication Engineering, Sathyabama Institute of Science and Technology, Chennai. Her research interests are biomedical signal processing and biosignal analysis. She has done her PhD in study of biosignals which can detect epileptic seizures. She has published her work in twelve scopus & web of science publications. Email: [email protected]

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