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Automatic Diagnosis of Brain Magnetic Resonance Images based on Riemannian Geometry

机译:基于黎曼几何的脑磁共振图像自动诊断

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Automated brain tumor detection and segmentation, from medical images, is one of the most challenging. The authors present, in this paper, an automatic diagnosis of brain magnetic resonance image. The goal is to prepare the image of the human brain to locate the existence of abnormal tissues in multi-modal brain magnetic resonance images. The authors start from the image acquisition, reduce information, brain extraction, and then brain region diagnosis. Brain extraction is the most important preprocessing step for automatic brain image analysis. The authors consider the image as residing in a Riemannian space and they based on Riemannian manifold to develop an algorithm to extract brain regions, these regions used in other algorithm to brain tumor detection, segmentation and classification. Riemannian Manifolds show the efficient results to brain extraction and brain analysis for multi-modal resonance magnetic images.
机译:从医学图像中自动进行脑肿瘤检测和分割是最具挑战性的工作之一。作者在本文中提出了一种大脑磁共振图像的自动诊断方法。目的是准备人脑图像,以定位多模式脑磁共振图像中异常组织的存在。作者从图像采集开始,减少信息,提取大脑,然后进行脑区域诊断。脑提取是自动脑图像分析最重要的预处理步骤。作者认为图像驻留在黎曼空间中,他们基于黎曼流形开发了一种提取大脑区域的算法,这些区域用于其他算法来进行脑肿瘤的检测,分割和分类。黎曼流形显示出对多模态共振磁图像进行脑提取和脑分析的有效结果。

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