Automated MRI Brain Tumour Segmentation and Classification Based on Deep Learning Techniques

K. Srilatha, P. Chitra, M. Sumathi, Mary Sajin Sanju. I, F. V. Jayasudha
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引用次数: 6

Abstract

A brain tumour is a significant death problem among other cancer types because the brain is a susceptible, complicated, and significant part of the human. The precise and appropriate examination can control the lifespan of an individual to a remarkable period. The image-segmentation of MRI (magnetic resonance images) is significant for envisioning and analyzing irregular tissues, notably during a medical examination. Intricacy and modifications of the tumour formation intensify difficulties in computerized brain tumour detection and segmentation in MRIs. This proposed system performs an automated brain tumour segmentation process in the MRI brain image accompanied by classification. Since, in this method, an effective brain tumour detection and classification scheme is intended using fusing GLCM features and CNN. The proposed method consists of four steps: pre-processing, image segmentation, extraction of features, and optimization and classification. First, noise elimination is done as the pre-processing step at the brain MR images. Following the classification method, irregular brain MR images are provided to the segmentation part to detect tumours and segments using the fuzzy c means (FCM) technique. Following that, GLCM and Ant colony optimization (ACO) which features are obtained from these noiseless MRI images of the brain. A tremendous numeral of features is decreased founded on Ant colony optimization (ACO). Finally, chosen features of brain images are provided to the CNN classifier to categorise MRI brain images as abnormal or normal. The proposed method performance is examined in various metrics, and testing outcomes are comparable to present systems.
基于深度学习技术的自动MRI脑肿瘤分割与分类
在其他癌症类型中,脑肿瘤是一个重大的死亡问题,因为大脑是人类的一个易感、复杂和重要的部分。精确和适当的检查可以控制一个人的寿命到一个显着的时期。MRI(磁共振图像)的图像分割对于设想和分析不规则组织具有重要意义,特别是在医学检查期间。肿瘤形成的复杂性和修饰性增加了mri中计算机化脑肿瘤检测和分割的困难。该系统在MRI脑图像中执行自动脑肿瘤分割过程,并伴有分类。因为,在这种方法中,一种有效的脑肿瘤检测和分类方案是利用融合GLCM特征和CNN。该方法包括预处理、图像分割、特征提取、优化分类四个步骤。首先,对脑磁共振图像进行去噪预处理。根据分类方法,将不规则脑MR图像提供给分割部分,利用模糊c均值(FCM)技术检测肿瘤和片段。然后,从这些无噪声的大脑MRI图像中获得GLCM和蚁群优化(ACO)特征。基于蚁群优化算法(蚁群优化)减少了大量的特征。最后,将选定的脑图像特征提供给CNN分类器,对MRI脑图像进行异常或正常分类。提出的方法性能在各种度量中进行了检查,并且测试结果与现有系统相当。
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