Visitors: 1383
  MAZEDAN DIGITAL LIBRARY
  JOURNAL MANAGEMENT SYSTEM
JOURNAL:MAZEDAN JOURNAL OF CIVIL ENGINEERING & ARCHITECTURE
# | Authors | First Online | DOI | Downloads | Citations |
---|---|---|---|---|---|
1. | MUHAMMAD KHALEEL AFZAL | 30 Sep 2021 | na | 13 | 0 |
This survey paper states that Brain tumor is an abandoned growth that is affecting no of peoples all over the world. Most analysis and research tell us that numbers of death are caused because the user is not known or unaware of detection of Tumor. In this Survey paper we focus to explain about different techniques and algorithm that are used to detect Brain Tumor regarding this we will deeply discuss MRI, CT scan, Segmentation, Extraction of noisy material, K-Mean Clustering and C-Mean Fuzzy, Gaussian and Median Filters Techniques to identify the best Algorithm for Brain Tumor Detection. We will also discuss in this survey paper about what are automation based on Advance Artifical Intelligence techniques to find brain tumor without human interaction to get more accurate results. Brain tumor diagnosis requires a detailed histological analysis, which involves invasive surgery that can be painful and can cause discomfort to patients. In this paper, the brain tumor diagnostic procedure is divided into the following phases. The first phase comprises of image pre-processing which includes histogram equalization, edge detection, noise filtering, thresholding, etc. in the second stage, the highlights of the MR cerebrum picture are separated utilizing independent Component Analysis. And the third stage, mind tumor determination s performed utilizing Self Organized Map. In this survey paper, we demonstrate an AI way to deal with recognize whether an MRI picture of a cerebrum contains a tumor or not. The most important concern of AIS (artificial intelligence system) is image processing machine learning and deep learning.
GoogLeNet, Artificial Intelligence, Medical Datasets, Image Segmentation, Malignant Tumors, Benign Tumor
[1] Access, O. (n.d.). We are IntechOpen, the world’ s leading publisher of Open Access books Built by scientists, for scientists TOP 1 %.
[2] Arya, M., & Sharma, R. (2016). Brain Tumor Detection through MR Images: A Review of Segmentation Techniques. International Journal of Computer Applications, 153(7), 33–37. https://doi.org/10.5120/ijca2016912109
[3] Bahru, J. (2014). TUMOR BRAIN DETECTION THROUGH MR IMAGES: A. 62(2), 387–403.
[4] Bauer, S., Seiler, C., Bardyn, T., Buechler, P., & Reyes, M. (2010). Atlas-based segmentation of brain tumor images using a Markov random field-based tumor growth model and non-rigid registration. 2010 Annual International Conference of the IEEE Engineering in Medicine and Biology Society, EMBC’10, August 2010, 4080–4083. https://doi.org/10.1109/IEMBS.2010.5627302