Rough set theory and feed forward neural network based brain tumor detection in magnetic resonance images

T. Rajesh, R. Malar
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引用次数: 28

Abstract

Segmentation of images holds an important position in the area of image processing. Computer aided detection of abnormality in medical images is primarily motivated by the necessity of achieving maximum possible accuracy. There are lots of methods for automatic and semi- automatic image classification, though most of them fail because of unknown noise, poor image contrast, inhomogeneity and boundaries that are usual in medical images. The MRI (Magnetic resonance Imaging) brain tumor segmentation is a complicated task due to the variance and intricacy of tumors. The principle aim of the project is to perform the MRI Brain image classification of cancer, based on Rough Set Theory and Feed Forward Neural Network classifier. For this purpose, first the features are extracted from the input MRI images using Rough set theory, and then the selected features are given as input to Feed Forward Neural Network classifier. Finally, Feed Forward Neural Network classifier is utilized to perform two functions. The first is to differentiate between normal and abnormal. The second function is to classify the type of abnormality in benign or malignant tumor.
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基于粗糙集理论和前馈神经网络的磁共振图像脑肿瘤检测
图像分割在图像处理领域中占有重要的地位。计算机辅助检测医学图像中的异常主要是为了达到尽可能高的准确性。自动和半自动图像分类方法有很多,但由于医学图像中常见的未知噪声、图像对比度差、非均匀性和边界等问题,大多数方法都失败了。由于肿瘤的多样性和复杂性,MRI(磁共振成像)脑肿瘤分割是一项复杂的任务。该项目的主要目的是基于粗糙集理论和前馈神经网络分类器对癌症进行MRI脑图像分类。为此,首先使用粗糙集理论从输入的MRI图像中提取特征,然后将选中的特征作为前馈神经网络分类器的输入。最后,利用前馈神经网络分类器完成两个功能。首先是区分正常和异常。第二个功能是对良性或恶性肿瘤的异常类型进行分类。
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