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An analytic approach to tensor scale with efficient computational solution and applications to medical imaging

机译:用高效计算解决方案和医学成像的张量规模的分析方法

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摘要

Scale is a widely used notion in medical image analysis that evolved in the form of scale-space theory where the key idea is to represent and analyze an image at various resolutions. Recently, a notion of local morphometric scale referred to as u22tensor scaleu22 was introduced using an ellipsoidal model that yields a unified representation of structure size, orientation and anisotropy. In the previous work, tensor scale was described using a 2-D algorithmic approach and a precise analytic definition was missing. Also, with previous framework, 3-D application is not practical due to computational complexity. The overall aim of the Ph.D. research is to establish an analytic definition of tensor scale in n-dimensional (n-D) images, to develop an efficient computational solution for 2- and 3-D images and to investigate its role in various medical imaging applications including image interpolation, filtering, and segmentation. Firstly, an analytic definition of tensor scale for n-D images consisting of objects formed by pseudo-Riemannian partitioning manifolds has been formulated. Tensor scale captures contextual structural information which is useful in local structure-adaptive anisotropic parameter control and local structure description for object/image matching. Therefore, it is helpful in a wide range of medical imaging algorithms and applications. Secondly, an efficient computational solution of tensor scale for 2- and 3-D images has been developed. The algorithm has combined Euclidean distance transform and several novel differential geometric approaches. The accuracy of the algorithm has been verified on both geometric phantoms and real images compared to the theoretical results generated using brute-force method. Also, a matrix representation has been derived facilitating several operations including tensor field smoothing to capture larger contextual knowledge. Thirdly, an inter-slice interpolation algorithm using 2-D tensor scale information of adjacent slices has been developed to determine the interpolation line at each image location in a gray level image. Experimental results have established the superiority of the tensor scale based interpolation method as compared to existing interpolation algorithms. Fourthly, an anisotropic diffusion filtering algorithm based on tensor scale has been developed. The method made use of tensor scale to design the conductance function for diffusion process so that along structure diffusion is encouraged and boundary sharpness is preserved. The performance has been tested on phantoms and medical images at various noise levels and the results were quantitatively compared with conventional gradient and structure tensor based algorithms. The experimental results formed are quite encouraging. Also, a tensor scale based n-linear interpolation method has been developed where the weights of neighbors were locally tuned based on local structure size and orientation. The method has been applied on several phantom and real images and the performance has been evaluated in comparison with standard linear interpolation and windowed Sinc interpolation methods. Experimental results have shown that the method helps to generate more precise structure boundaries without causing ringing artifacts. Finally, a new anisotropic constrained region growing method locally controlled by tensor scale has been developed for vessel segmentation that encourages axial region growing while arresting cross-structure leaking. The method has been successfully applied on several non-contrast pulmonary CT images. The accuracy of the new method has been evaluated using manually selection and the results found are very promising.
机译:SCALE是在医学图像分析中广泛使用的概念,其以规模空间理论的形式演变,其中关键的想法是以各种分辨率代表和分析图像。最近,使用椭圆形模型引入了称为 U222222222的局部形态学规模的概念,其产生统一的结构尺寸,取向和各向异性的统一表示。在以前的工作中,使用2-D算法方法描述了张量标度,并且缺少了精确的分析定义。此外,由于以前的框架,由于计算复杂性,3-D应用不实际。博士的整体目标。研究是在N维(ND)图像中建立张量刻度的分析定义,为2和3-D图像开发有效的计算解决方案,并调查其在各种医学成像应用中的作用,包括图像插值,过滤和滤波和分割。首先,已经制定了由由伪riemannian分区歧管形成的物体组成的N-D图像的张量标度的分析定义。张量刻度捕获在局部结构 - 自适应各向异性参数控制和局部结构描述中是有用的上下文结构信息,用于对象/图像匹配。因此,它有助于各种医学成像算法和应用。其次,已经开发出2-和3-D图像的张量标度的有效计算解决方案。该算法组合了欧几里德距离变换和几种新型差分几何方法。与使用布鲁斯方法产生的理论结果相比,算法的准确性已经验证了几何幽灵和真实图像。此外,已经推导了矩阵表示,从而促进包括张量场平滑的若干操作以捕获更大的上下文知识。第三,已经开发了使用相邻切片的2-D张量刻度信息的切片间插值算法以确定灰度级图像中的每个图像位置处的插值线。与现有插值算法相比,实验结果建立了基于张量规模的插值方法的优越性。第四,已经开发了一种基于张量标度的各向异性扩散滤波算法。该方法利用张量刻度来设计用于扩散过程的电导功能,从而鼓励沿着结构扩散,并保留边界清晰度。在不同噪声水平的幽灵和医学图像上测试了性能,并且与传统梯度和结构张量的算法定量比较了结果。形成的实验结果非常令人鼓舞。此外,已经开发了一种基于张量级的N线性插值方法,其中基于局部结构大小和方向在本地调谐的邻居的权重。该方法已应用于几个幻像和实际图像,并且与标准线性插值和窗口真址插值方法相比,已经评估了性能。实验结果表明,该方法有助于在不引起振铃伪影的情况下产生更精确的结构边界。最后,已经开发了一种通过张量标度局部控制的新的各向异性约束区域生长方法,用于鼓励轴向区域生长的血管分割,同时阻止交叉结构泄漏。该方法已成功应用于几种非对比性肺CT图像上。使用手动选择评估了新方法的准确性,并且找到的结果非常有前途。

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    Ziyue Xu;

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