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Multifractal feature-based abnormal tissues segmentation in brain MRI using modified adaboost classifier

机译:改进的adaboost分类器在脑MRI中基于多分形特征的异常组织分割

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Brain tumour segmentation is an important task in medical imaging. In this work, image features-based process is proposed to segment brain tumour in MRI images. For the segmentation of brain tumour, MRI brain images should be free from artefacts because it causes unwanted variation in the image and affects the performance of image processing techniques used for brain image analysis. The proposed system consists of three phases: preprocessing, feature extraction and segmentation. In preprocessing, the motion artefacts are corrected by spatial transformations. Texture features are extracted from the estimation of multifractal dimension using curvelet transform. Along with this feature, texton and intensity features are also considered. The fusions of all the features are fed to the modified adaboost classifier. BRATS 2013 dataset is used in this work along with its ground truth. The performance of the method is analysed in terms of sensitivity, specificity and accuracy. The proposed work gives higher accuracy on segmenting abnormal tissues compared with wavelet-based existing methods.
机译:脑肿瘤分割是医学成像中的重要任务。在这项工作中,提出了基于图像特征的过程以在MRI图像中分割脑肿瘤。对于脑肿瘤的分割,MRI脑图像应该没有伪影,因为它会导致图像中不必要的变化并影响用于脑图像分析的图像处理技术的性能。拟议的系统包括三个阶段:预处理,特征提取和分割。在预处理中,通过空间变换来校正运动伪影。使用Curvelet变换从多重分形维数估计中提取纹理特征。除此功能外,还考虑了texton和强度功能。所有特征的融合都输入到改进的adaboost分类器中。 BRATS 2013数据集与其基本事实一起用于这项工作。从灵敏度,特异性和准确性方面分析了该方法的性能。与基于小波的现有方法相比,提出的工作在分割异常组织方面具有更高的准确性。

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