Edge Detection to Indication Brain Tumor Using Sobel and Morphological Operations Methods Based on Image Magnetic Resonance Imaging
DOI:
https://doi.org/10.24114/cess.v3i2.10024Abstract
Brain tumors are the second leading cause of death in the world in children under 20, scientists and researchers are developing applications to react brain tumors based on magnetic resonance imaging images. In this application the method used is sobel and morphological operations. Based on research conducted on brain tumor edge detection based on magnetic resonance imaging image, sobel method can reduce the noise contained in the image mri and can localize the edge of the image of Magnetic Resonance Imaging well. This research can conclude that the sobel method is suitable for edge detection but there is still some unprocessed noise, with the results of the brain imaging of 30 test images have 60% percentage, while for the use of edge detection method of 62.11%.References
American Brain Tumor Association (ABTA). 2012. About Brain Tumors a Primer for Patients and Caregivers. Chicago : ABTA. Pp. 76 “ 78.
Chudasama, D. Patel, T. Joshi, Shubham. Prajapati, G.I. 2015. Image Segmentation using Morphological Operations. Information Technology. Vol.117. No 18, ISSN : 0975-8887.
Dolly, Indra. 2016. Pendeteksian Tepi Objek Menggunakan Metode Gradien. Teknik Informatika, Vol.8. No 2, ISSN: 2087-1716.
Joseph, R. Paul, Singh, C. Senthil. Manikandan, M. 2014. Brain Tumor MRI Image Segmentation and Detection in Image Processing. Electronic and Communication Engineering. Vol.03. Issue.01, eISSN : 2319-1163
Priyawati, D. Soeesanti, I. Hidayah, I. 2015. Kajian Pustaka Metode Segmentasi Citra pada MRI Tumor Otak. Prosiding SNST VI, 2015, Semarang, Indonesia. Hal. 207-215, ISBN: 978-602-99334-4-4.
Winarno, Edy. 2011. Aplikasi Deteksi Tepi pada Realtime video menggunakan Algoritma Canny Detection.Teknik Informatika , Vol.16. No.1. Hal.44-49, ISSN : 08549524.
Zhou, Ping. Wenjun, YE. Yaojie, Xia. Qi, Wang. 2011. An Improved Canny Algorithm for Edge Detection.School of Computer and Information Engineering , DOI:10.1109/WCSE.2009.718
Downloads
Published
Issue
Section
License
Copyright (c) 2018 CESS (Journal of Computer Engineering, System and Science)

This work is licensed under a Creative Commons Attribution 4.0 International License.