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Development of a unified probabilistic framework for segmentation and recognition of semi-rigid objects in complex backgrounds via deformable shape models.

机译:开发统一的概率框架,通过可变形的形状模型对复杂背景中的半刚性对象进行分割和识别。

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摘要

This dissertation presents the development, implementation, and application of a unified probabilistic shape and appearance model (PSAM) algorithm for boundary-based segmentation and recognition of semirigid objects on complex backgrounds. The boundary position is iteratively adjusted to fit a new object based on a priori information gathered from a training set. PSAM is derived from compound Bayesian decision theory, and the formulation is general enough that it can be used as a starting point to derive a variety of other probabilistic boundary-finding techniques. The motivation for developing PSAM arose from a need to segment and recognize semirigid anatomic structures within medical images that have faint and/or missing edge information.; PSAM contains three specific model components: (1) a global shape model (GSM), (2) a local shape model (LSM), and (3) a gray-level model (GLM). All three of the PSAM components are optimized simultaneously when boundary searches are performed within new images. PSAM is formulated so that the influence of each of these components on the final boundary position can be controlled by the system operator. This allows the same PSAM algorithm to be used in applications with predictable global shape and relatively poor object edge strength, as well as in other applications where global shape is unpredictable but object edges are prominent.; The performance of the PSAM algorithm is summarized on both synthetic and real-world data. The results of three cases of real medical image data segmentations are presented. These cases include X-ray tomographic images of anatomic structures within laboratory mice. Specifically, the skull, the heart and lungs, and the kidneys are segmented using PSAM and ASM; and the results of the two algorithms are directly compared. In all cases the PSAM algorithm performed well and in fact, outperformed ASM by a substantial margin. It is shown that PSAM has a much larger degree of success than ASM on the most difficult segmentation cases. The PSAM performance is summarized, and a variety of future research topics are suggested that could lead to improved performance and broader applicability.
机译:本文提出了一种基于概率的形状和外观模型(PSAM)算法,用于复杂背景下基于边界的半刚性物体的分割和识别方法的开发,实现和应用。基于从训练集中收集的先验信息,迭代调整边界位置以适合新对象。 PSAM是从复合贝叶斯决策理论派生而来的,该公式具有足够的通用性,可以用作衍生各种其他概率边界查找技术的起点。开发PSAM的动机来自于对医学图像中具有模糊和/或缺失边缘信息的半刚性解剖结构进行分割和识别的需求。 PSAM包含三个特定的模型组件:(1)全局形状模型(GSM),(2)局部形状模型(LSM)和(3)灰度模型(GLM)。在新图像中执行边界搜索时,同时优化了这三个PSAM组件。制定了PSAM,以便系统操作员可以控制每个组件对最终边界位置的影响。这允许在具有可预测的整体形状和相对较差的对象边缘强度的应用程序中使用相同的PSAM算法,以及在整体形状不可预测但对象边缘突出的其他应用程序中使用。 PSAM算法的性能在合成数据和实际数据中都得到了总结。给出了三种实际医学图像数据分割情况的结果。这些情况包括实验室小鼠体内解剖结构的X射线断层扫描图像。具体来说,使用PSAM和ASM对头骨,心脏,肺和肾脏进行分割;并将两种算法的结果直接进行比较。在所有情况下,PSAM算法均表现良好,实际上,其性能大大优于ASM。结果表明,在最困难的分割情况下,PSAM的成功程度远高于ASM。总结了PSAM的性能,并提出了各种未来的研究主题,这些主题可能会导致性能提高和更广泛的适用性。

著录项

  • 作者

    Gleason, Shaun Scott.;

  • 作者单位

    The University of Tennessee.;

  • 授予单位 The University of Tennessee.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2001
  • 页码 175 p.
  • 总页数 175
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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