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Dynamic edge tracing: Recursive methods for medical image segmentation.

机译:动态边缘跟踪:用于医学图像分割的递归方法。

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Medical image segmentation is a sufficiently complex problem that no single strategy has proven to be completely effective. Historically, region growing, clustering, and edge tracing have been used and while significant steps have been made in the first two, research into automatic, recursive, edge following has not kept pace. In this thesis, a new, advanced, edge tracing strategy based on recursive, target tracking algorithms and suitable for use in segmenting magnetic resonance (MR) and computed tomography (CT) medical images is presented.; This work represents the first application of recursive, target-tracking-based, edge tracing to the segmentation of MR and CT images of the head. Three algorithms representing three stages of development are described. In the third stage, pixel classification data are combined with edge information to guide the formation of the object boundary, and smooth, subpixel-resolution contours are obtained. Results from tests in images containing noise, intensity nonuniformity, and partial volume averaging indicate that the edge tracing algorithm can produce segmentation quality comparable to that from methods based on clustering and active contours, when closed contours can be formed. In addition, low-contrast boundaries can be identified in cases where the other methods may fail, indicating that the information extracted by the edge tracing algorithm is not a subset of that from the other approaches. Additional investigation may allow: (1) the use of knowledge to further guide the segmentation process; and, (2) the formation of multiple segmentation interpretations to be provided as output to the operator or as input to higher-level, automatic processing.; A literature review describing the most common medical image segmentation algorithms is also provided. Three generations of development are defined as a framework for classifying these algorithms.
机译:医学图像分割是一个非常复杂的问题,没有单一策略被证明是完全有效的。从历史上看,已经使用了区域增长,聚类和边缘跟踪,并且尽管在前两个步骤中已经采取了重要步骤,但是对自动,递归,边缘跟踪的研究却没有跟上。本文提出了一种基于递归目标跟踪算法的,先进的,先进的边缘跟踪策略,适用于分割磁共振(MR)和计算机断层扫描(CT)医学图像。这项工作代表了基于目标跟踪的递归边缘跟踪在头部MR和CT图像分割中的首次应用。描述了代表开发的三个阶段的三种算法。在第三阶段,将像素分类数据与边缘信息相结合,以引导对象边界的形成,并获得平滑的亚像素分辨率轮廓。包含噪声,强度不均匀和部分体积平均的图像中的测试结果表明,当可以形成闭合轮廓时,边缘跟踪算法可以产生与基于聚类和活动轮廓的方法相当的分割质量。此外,在其他方法可能失败的情况下,可以识别低对比度边界,这表明边缘跟踪算法提取的信息不是其他方法的信息的子集。进一步的调查可能允许:(1)利用知识进一步指导细分过程; (2)形成多个分段解释,以提供给操作员输出或提供给更高级别的自动处理。还提供了描述最常见医学图像分割算法的文献综述。三代开发被定义为对这些算法进行分类的框架。

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