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Medical Image Segmentation Using Minimal Path Deformable Models With Implicit Shape Priors

机译:使用具有隐式形状先验的最小路径可变形模型进行医学图像分割

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This paper presents a new method for segmentation of medical images by extracting organ contours, using minimal path deformable models incorporated with statistical shape priors. In our approach, boundaries of structures are considered as minimal paths, i.e., paths associated with the minimal energy, on weighted graphs. Starting from the theory of minimal path deformable models, an intelligent “worm” algorithm is proposed for segmentation, which is used to evaluate the paths and finally find the minimal path. Prior shape knowledge is incorporated into the segmentation process to achieve more robust segmentation. The shape priors are implicitly represented and the estimated shapes of the structures can be conveniently obtained. The worm evolves under the joint influence of the image features, its internal energy, and the shape priors. The contour of the structure is then extracted as the worm trail. The proposed segmentation framework overcomes the shortcomings of existing deformable models and has been successfully applied to segmenting various medical images.
机译:本文提出了一种新方法,通过使用结合了统计形状先验的最小路径可变形模型,通过提取器官轮廓来分割医学图像。在我们的方法中,结构的边界被视为最小路径,即加权图上与最小能量关联的路径。从最小路径可变形模型的理论出发,提出了一种智能的“蠕虫”算法进行分割,该算法用于评估路径并最终找到最小路径。将先前的形状知识合并到分割过程中,以实现更可靠的分割。隐含地表示形状先验,并且可以方便地获得结构的估计形状。蠕虫在图像特征,其内部能量和形状先验的共同影响下进化。然后将结构的轮廓提取为蠕虫痕迹。提出的分割框架克服了现有可变形模型的缺点,并已成功地应用于分割各种医学图像。

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