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Fuzzy model based object delineation via energy minimization

机译:通过能量最小化的基于模糊模型的目标描述

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We study the problem of automatic delineation of an anatomic object in an image, where the object is solely identified by its anatomic prior. We form such priors in the form of fuzzy models to facilitate the segmentation of images acquired via different imaging modalities (like CT, MRI, or PET), in which the recorded image properties are usually different. Our main interest is in delineating different body organs in medical images for automatic anatomy recognition (AAR). The AAR system we are developing consists of three main components: (C1) building body-wide groupwise fuzzy anatomic models; (C2) recognizing the body organs geographically and then delineating them by employing the models; (C3) generating quantitative descriptions. This paper focuses on (C2) and presents a unified approach for model-based segmentation within which several different strategies can be formulated, ranging from model-based hard/fuzzy thresholding to model-based graph cut, fuzzy connectedness, and random walker methods and algorithms. This is an important theoretical advance. The presented experiments clearly prove, that a fully automatic segmentation system based on the fuzzy models can indeed provide the reliable segmentations. However, the presented experiments utilize only the simplest versions of the methodology presented in the theoretical part of the paper. The full experimental evaluation of the methodology is still a work in progress.
机译:我们研究图像中解剖对象的自动描绘问题,其中该对象仅通过其解剖先验来识别。我们以模糊模型的形式形成此类先验,以促进对通过不同成像方式(例如CT,MRI或PET)获取的图像进行分割,在这些成像方式中,所记录的图像属性通常是不同的。我们的主要兴趣是在医学图像中描绘不同的身体器官,以进行自动解剖识别(AAR)。我们正在开发的AAR系统包括三个主要组件:(C1)建立全身范围的分组模糊解剖模型; (C2)在地理上识别身体器官,然后通过使用模型来描绘它们; (C3)生成定量描述。本文着重于(C2),并提出了一种基于模型的统一方法,可以在其中制定几种不同的策略,从基于模型的硬/模糊阈值到基于模型的图割,模糊连通性以及随机沃克方法以及算法。这是重要的理论进展。实验证明,基于模糊模型的全自动分割系统确实可以提供可靠的分割效果。但是,提出的实验仅利用本文理论部分介绍的方法的最简单形式。对该方法进行全面的实验评估仍在进行中。

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