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Medical image segmentation using a tree model

机译:使用树模型的医学图像分割

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摘要

A model-driven, multiscale medical image segmentation system is presented. A tree representation is calculated for the image, using a modification of the immersion algorithm used for watersheds calculation. Segmentation is carried out by a matching process between the obtained tree and a tree model, which embeds the prior knowledge about the images. Tree matching is done in a multilevel way, processing different tree levels sequentially. For each level, an optimization process is performed, in which an error function, obtained from differences between the model and the segmented tree, is minimized. 13 parameters, concerning gray level, shape, position and connectivity, are used to characterize the objects. The model is obtained from a set of training images, assigning manual labels to tree nodes with a user interface designed especially for this purpose. Three-dimensional, multicomponent images can be processed by adapting gradient and parameter calculation. The system has been tested for intracranial cavity segmentation in magnetic resonance images, giving accurate results.
机译:提出了模型驱动的多尺度医学图像分割系统。使用用于流域计算的浸没算法的修改来计算图像的树形表示。分割是通过所获得的树和树模型之间的匹配过程来执行,该过程嵌入了关于图像的先前知识。树匹配以多级方式完成,顺序处理不同的树级。对于每个级别,执行优化过程,其中从模型和分段树之间的差异获得的错误函数被最小化。 13参数,关于灰度,形状,位置和连接,用于表征对象。该模型是从一组训练图像获得的,将手动标签分配给树节点,其中用户界面专为此目的而设计。通过调整梯度和参数计算,可以处理三维的多组分图像。该系统已经测试了磁共振图像中的颅内腔分段,得到准确的结果。

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