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Statistical methods for out-of-plane ultrasound transducer motion estimation.

机译:平面外超声换能器运动估计的统计方法。

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摘要

Freehand 3D ultrasound imaging usually involves moving a conventional tracked 2D ultrasound probe over a subject and combining the images into a volume to be interpreted for medical purposes. Tracking devices can be cumbersome; thus, there is interest in inferring the trajectory of the transducer based on the images themselves. This thesis focuses on new methods for the recovery of the out-of-plane component of the transducer trajectory using the predictive relationship between the elevational decorrelation of ultrasound speckle patterns and transducer displacement. To resolve the directional ambiguities associated with this approach, combinatorial optimisation techniques and robust statistics are combined to recover non-monotonic motion and frame intersections. In order to account for the variability of the sample correlation coefficient between corresponding image patches of fully developed speckle, a new probabilistic speckle decorrelation model is developed. This model can be used to quantify the uncertainty of any displacement estimate, thereby facilitating the use of a new maximum likelihood out-of-plane trajectory estimation approach which fully exploits the information available from multiple redundant and noisy correlation measurements collected in imagery of fully developed speckle. To generalise the applicability of these methods to the case of imagery of real tissue, a new data-driven method is proposed for locally estimating elevational correlation length based on statistical features collected within the image plane. In this approach, the relationship between the image features and local elevational correlation length is learned by sparse Gaussian process regression using a training set of synthetic ultrasound image sequences. The synthetic imagery used for learning is created via a new statistical model for the spatial distribution of ultrasound scatterers which maps realisations of a 1D generalised Poisson point process to a 3D Hilbert space-filling curve. In experiments with imagery of animal tissue, the learning-based approach is shown to give distance estimates more accurate than those obtained using a speckle detection filter and comparable to the state-of-the-art heuristic method. Remaining modelling imperfections are accounted for by a new iterative algorithm which extends the proposed maximum likelihood measurement fusion approach. In this algorithm, probabilistic measurement fusion and measurement selection steps based on statistical hypothesis testing alternate in order to establish a trajectory estimate based on measurements which agree with each other. This approach succeeds in avoiding distance under-estimates arising from image structures exhibiting significant but uninformative correlation over long distances.
机译:徒手3D超声成像通常涉及在对象上移动常规的跟踪2D超声探头,然后将图像合并为一个要解释用于医学目的的体积。跟踪设备可能很麻烦;因此,有兴趣基于图像本身来推断换能器的轨迹。本文着眼于利用超声散斑图的高度去相关与换能器位移之间的预测关系来恢复换能器轨迹的平面外分量的新方法。为了解决与这种方法相关的方向模糊性,组合优化技术和鲁棒的统计信息相结合以恢复非单调运动和框架相交。为了解决完全发展的斑点的相应图像斑块之间的样本相关系数的变化,开发了新的概率斑点去相关模型。该模型可用于量化任何位移估计的不确定性,从而有助于使用新的最大似然面外轨迹估计方法,该方法充分利用了从完全发达的图像中收集的多个冗余和噪声相关测量中获得的信息斑点。为了将这些方法的适用性推广到真实组织的图像情况,提出了一种新的数据驱动方法,用于基于在图像平面内收集的统计特征局部估计海拔高度相关长度。在这种方法中,使用合成超声图像序列的训练集通过稀疏高斯过程回归来了解图像特征与局部高程相关长度之间的关系。用于学习的合成图像是通过用于超声散射体空间分布的新统计模型创建的,该模型将一维广义泊松点过程的实现映射到3D希尔伯特空间填充曲线。在对动物组织成像的实验中,基于学习的方法显示出距离估计比使用斑点检测滤波器获得的距离估计更准确,并且可以与最新的启发式方法相比。新的迭代算法解决了剩余的建模缺陷,该算法扩展了提出的最大似然测量融合方法。在该算法中,基于统计假设检验的概率度量融合和度量选择步骤相互交替,以便基于彼此一致的度量来建立轨迹估计。该方法成功避免了由于图像结构在长距离上显示出显着但无信息的相关性而引起的距离低估。

著录项

  • 作者

    Laporte, Catherine.;

  • 作者单位

    McGill University (Canada).;

  • 授予单位 McGill University (Canada).;
  • 学科 Engineering Biomedical.;Computer Science.;Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 303 p.
  • 总页数 303
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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