This work uses a novel brain tumor classification technique which comprises 5 steps like “(i) denoising, (ii) skull stripping, (iii) segmentation, (iv) feature extraction and (v) classification”. At first, the image is given in the denoising procedure, whereas the amputation of the noise process is performed by using an entropy-oriented trilateral filter. Subsequently, noise removed image is used to skull stripping procedure through morphology segmentation and Otsu thresholding. Then, the segmentation takes place using the adaptive CLFAHE method. GLCM features are extracted after finishing segmentation. Here, hybrid classification represents the hybridization of 2 classifiers such as FNN and “Bayesian regularization classifier”. The very important involvement lies in the best selecting of hidden neurons in FNN. In this paper, a novel genetic algorithm based GWO (GA-GWO) method is proposed that hybrids the conception. At last, the proposed method performance is evaluated with conventional techniques to show the supremacy of the proposed method.
M B naceur, Mohamed Akil, Rachida Saouli, Rostom Kachouri,"Fully automatic brain tumor segmentation with deep learning-based selective attention using overlapping patches and multi-class weighted cross-entropy", Medical Image Analysis, Volume 63, July 2020.
Mohamed A. Naser, M. Jamal Deen,"Brain tumor segmentation and grading of lower-grade glioma using deep learning in MRI images", Computers in Biology and Medicine,Volume 121, June 2020.
P. M. Siva Raja, Antony Viswasa rani, "Brain tumor classification using a hybrid deep autoencoder with Bayesian fuzzy clustering-based segmentation approach", Biocybernetics and Biomedical EngineeringVolume 40, Issue 1January–March 2020, Pages 440-453.
Arti Tiwari, Shilpa Srivastava, Millie Pant,"Brain tumor segmentation and classification from magnetic resonance images: Review of selected methods from 2014 to 2019", Pattern Recognition Letters, Volume 131, March 2020, Pages 244-260.
Fatih ŞİŞİK, Eser SERT,"Brain tumor segmentation approach based on the extreme learning machine and significantly fast and robust fuzzy C-means clustering algorithms running on Raspberry Pi hardware", Medical Hypotheses,Volume 136, March 2020.
Zexun Zhou, Zhongshi He, Yuanyuan Jia," AFPNet: A 3D fully convolutional neural network with atrous- convolution feature pyramid for brain tumor segmentation via MRI images",Neurocomputing,Volume 40218, August 2020, Pages 235-244.
H. Chang, "Entropy-based trilateral filtering for noise removal in digital images," 2010 3rd International Congress on Image and Signal Processing, Yantai, 2010, pp. 673-677.
Yousefi, Jamileh, "Image Binarization using Otsu Thresholding Algorithm", 2015.
Chris EbeyHoneycutt, RoyPlotnick,"Image analysis techniques and gray-level co-occurrence matrices (GLCM) for calculating bioturbation indices and characterizing biogenic sedimentary structures", Computers & Geosciences, vol.34, no.11, pp.1461-1472, November 2008.
Ms. Asha, Mr. Krishan Gupta," A Basic Approach to Enhance a Gray Scale Image", Imperial Journal of Interdisciplinary Research (IJIR), vol.2, no.7, 2016.
Kayri, Murat,"Predictive Abilities of Bayesian Regularization and Levenberg–Marquardt Algorithms in Artificial Neural Networks: A Comparative Empirical Study on Social Data", Mathematical and Computational Applications, 2016.
E. Daniel, J. Anitha and J. Gnanaraj “Optimum laplacian wavelet mask based medical image using hybrid cuckoo search – grey wolf optimization algorithm”, Knowledge-Based Systems vol. 131, no. 1, pp. 58–69, Sep. 2017.
E.Daniel, J. Anitha, “Optimum green plane masking for the contrast enhancement of retinal images using enhanced genetic algorithm”, Optik 126 (2015) 1726–1730.
J. Li, Z. Peng, Multi-source image fusion algorithm based on cellular neural networks with genetic algorithm, Optik 126 (2015) 5230–5236.
V. Nair , G.E. Hinton , “Rectified linear units improve restricted Boltzmann ma- chines”, in: Proceedings of International Conference on Machine Learning, 2010, pp. 26–30.
Quazi M. H and Dr. S. G. Kahalekar,"Artifacts Removal using Dragonfly Levenberg Marquardt-Based Learning Algorithm from Electroencephalogram Signal"Multimedia Research, Volume 2, Issue 2, April 2019.
V. Vinolin,"Breast Cancer Detection by Optimal Classification using GWO Algorithm"Multimedia Research, Volume 2, Issue 2, April 2019.
R. Cristin,Dr.V.Cyril Raj and Ramalatha Marimuthu,"Face Image Forgery Detection by Weight Optimized Neural Network Model,"Multimedia Research, Volume 2, Issue 2, April 2019.
Vinusha S.,"Secret Image Sharing and Steganography Using Haar Wavelet Transform"Multimedia Research, Volume 2, Issue 2, April 2019.