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Generalized sparse MRF appearance models

机译:广义稀疏MRF外观模型

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摘要

Image segmentation or registration approaches that rely on a local search paradigm (e.g, Active Appearance Models, Active Contours) require an initialization that provides for considerable overlap or a coarse localization of the object to be segmented or localized. In this paper we propose an approach that does not need such an initialization, but localizes anatomical structures in a global manner by formulating the localization task as the solution of a Markov Random Field (MRF).rnDuring search Sparse MRF Appearance Models (SAMs) relate a priori information about the geometric configuration of landmarks and local appearance features to a set of candidate points in the target image. They encode the correspondence probabilities as an MRF, and the search in the target image is equivalent to solving the MRF. The resulting node labels define a mapping of the modeled object (e.g. a sequence of vertebrae) to the target image interest points. The local appearance information is captured by novel symmetry-based interest points and local descriptors derived from Gradient Vector Flow (CVF). Alternatively, arbitrary interest points can be used. Experimental results are reported for two data-sets showing the applicability to complex medical data. The approach does not require initialization and finds the most plausible match of the query structure in the entire image. It provides for precise, reliable and fast localization of the structure.
机译:依赖于局部搜索范例(例如,主动外观模型,主动轮廓)的图像分段或配准方法需要初始化,该初始化提供了要分段或定位的对象的相当大的重叠或粗略的定位。在本文中,我们提出了一种不需要初始化的方法,而是通过将定位任务公式化为马尔可夫随机场(MRF)的解决方案以全局方式对解剖结构进行定位.rn在搜索过程中,稀疏MRF外观模型(SAMs)涉及关于地标和局部外观特征的几何配置对目标图像中的一组候选点的先验信息。他们将对应概率编码为MRF,并且在目标图像中进行搜索等同于求解MRF。所得到的节点标签定义了建模对象(例如,椎骨序列)到目标图像兴趣点的映射。通过新颖的基于对称的兴趣点和从梯度矢量流(CVF)派生的局部描述符来捕获局部外观信息。可替代地,可以使用任意兴趣点。报告了两个数据集的实验结果,这些数据集显示了对复杂医学数据的适用性。该方法不需要初始化,而是在整个图像中找到查询结构最合理的匹配。它提供了结构的精确,可靠和快速的定位。

著录项

  • 来源
    《Image and Vision Computing》 |2010年第6期|p.1031-1038|共8页
  • 作者单位

    Computational Image Analysis and Radiology Lab. Department of Radiology. Medical University of Vienna, Waehringer Curtel 18-22, 1090 Vienna, Austria;

    Computational Image Analysis and Radiology Lab. Department of Radiology. Medical University of Vienna, Waehringer Curtel 18-22, 1090 Vienna, Austria;

    rnGeorge Mason University. 4400 University Drive MS 4A5, Fairfax. VA 22030, USA;

    rnInstitute for Computer Graphics and Vision, Graz University of Technology, Inffeldgasse 16, 8070 Graz, Austria;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    markov random fields; appearance models; object localization; medical imaging;

    机译:马可夫随机字段;外观模型;对象定位;医学影像;

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