Tissue segmentation of MRI of the head by means of a Kohonen map

S. Congorto, S. D. Penna, S. Erne
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引用次数: 8

Abstract

The authors developed a new method in order to automatically segment magnetic resonance images (MRIs) of the head. The main tissues, such as scalp, brain and skull, are recognised. The method is based on a Kohonen self organising feature map which performs a cluster of the image areas into three main classes. The network, after being trained, is successfully operated on the test set. The network performances do not depend on the MRI apparatus producing the images set. The network classes are properly matched and processed in order to obtain slices containing the desired tissues. The proposed method has been developed in the frame of a project for the 3-dimensional reconstruction of selected surfaces.
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基于Kohonen图的头部MRI组织分割
提出了一种自动分割头部核磁共振图像的新方法。主要的组织,如头皮、大脑和头骨,是可以识别的。该方法基于Kohonen自组织特征映射,将图像区域聚类为三个主要类别。网络经过训练后,在测试集上运行成功。网络性能不依赖于产生图像集的MRI设备。适当地匹配和处理网络类,以获得包含所需组织的切片。所提出的方法是在一个项目的框架内开发的,用于选定曲面的三维重建。
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