Innovative brain tumor detection using optimized deep learning techniques

被引:0
作者
Praveen Kumar Ramtekkar
Anjana Pandey
Mahesh Kumar Pawar
机构
[1] University Institute of Technology,
[2] Rajiv Gandhi Proudyogiki Vishwavidyalaya,undefined
来源
International Journal of System Assurance Engineering and Management | 2023年 / 14卷
关键词
ACO; BCO; CNN; GA; GLCM; GWO; MRI; PSO; WOA;
D O I
暂无
中图分类号
学科分类号
摘要
An unusual increase of nerves inside the brain, which disturbs the actual working of the brain, is called a brain tumor. It has led to the death of lots of lives. To save people from this disease timely detection and the right cure is the need of time. Finding tumor-affected cells in the human brain is a cumbersome and time- consuming task. However, the accuracy and time required to detect brain tumors is a big challenge in the arena of image processing. This research paper proposes an innovative, accurate and optimized system to detect brain tumors. The system follows the activities like, preprocessing, segmentation, feature extraction, optimization and detection. The preprocessing system uses a compound filter, which is a composition of Gaussian, mean and median filters. Threshold and histogram techniques are applied for image segmentation. Grey level co- occurrence matrix is used for feature extraction. The optimized convolution neural network (CNN) technique is applied here that uses ant colony optimization, bee colony optimization and particle swarm optimization, genetic algorithm, gray wolf optimization and whale optimization algorithm techniques for best feature selection. Detection of brain tumors is achieved through CNN classifiers. This system compares its performance with another modern technique of optimization by using accuracy, precision and recall parameters and claims the supremacy of this work. This system is implemented in the Python programming language. The brain tumor detection accuracy of this optimized system has been measured at 98.9%.
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页码:459 / 473
页数:14
相关论文
共 35 条
[1]  
Abdel-Gawad AH(2020)Optimized edge detection technique for brain tumor detection in MR images IEEE Access 8 136243-136259
[2]  
Lobna A(2016)Analysis of MRI based brain tumoridentification using segmentation technique Int Conf Commun Signal Process (ICCSP) 2016 2109-2113
[3]  
Ahmed S(2015)Image processing techniques for brain tumor detection: a review Int J Emerg Trends Technol Comput Sci 4 28-32
[4]  
Radwan G(2019)A robust grey wolf-based deep learning for brain tumour detection in MR images Biomed Eng-Biomed Tech 65 191-207
[5]  
Bhima K(2021)Multi-classification of brain tumor MRI images using deep convolutional neural network with fully optimized framework Iran J Sci Technol Trans Electr Eng 45 1015-1036
[6]  
Jagan A(2016)An efficient brain tumor MRI segmentation and classification using GLCM texture features and feed forward neural networks World J Med Sci 13 85-92
[7]  
Borole VY(2021)Segmentation of MRI brain tumor image using optimization based deep convolutional neural networks (DCNN) Open Comput Sci 11 380-390
[8]  
Geetha A(2019)Glioma brain tumor detection and segmentation using weighting random forest classifier with optimized ant colony features Int J Imag Syst Technol 29 353-359
[9]  
Gomathi N(2022)Whale Harris Hawks optimization based deep learning classifier for brain tumor detection using MRI images J King Saud Univ-Comput Inf Sci 34 3259-3272
[10]  
Irmak E(2019)Alzheimer detection using group grey wolf optimization based features with convolutional classifier Comput Electr Eng 77 230-243