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Statistical shape analysis for bio-structures : local shape modelling, techniques and applications

机译:生物结构的统计形状分析:局部形状建模,技术和应用

摘要

A Statistical Shape Model (SSM) is a statistical representation of a shape obtained from data to study variation in shapes. Work on shape modelling is constrained by many unsolved problems, for instance, difficulties in modelling local versus global variation. SSM have been successfully applied in medical image applications such as the analysis of brain anatomy. Since brain structure is so complex and varies across subjects, methods to identify morphological variability can be useful for diagnosis and treatment. The main objective of this research is to generate and develop a statistical shape model to analyse local variation in shapes. Within this particular context, this work addresses the question of what are the local elements that need to be identified for effective shape analysis. Here, the proposed method is based on a Point Distribution Model and uses a combination of other well known techniques: Fractal analysis; Markov Chain Monte Carlo methods; and the Curvature Scale Space representation for the problem of contour localisation. Similarly, Diffusion Maps are employed as a spectral shape clustering tool to identify sets of local partitions useful in the shape analysis. Additionally, a novel Hierarchical Shape Analysis method based on the Gaussian and Laplacian pyramids is explained and used to compare the featured Local Shape Model. Experimental results on a number of real contours such as animal, leaf and brain white matter outlines have been shown to demonstrate the effectiveness of the proposed model. These results show that local shape models are efficient in modelling the statistical variation of shape of biological structures. Particularly, the development of this model provides an approach to the analysis of brain images and brain morphometrics. Likewise, the model can be adapted to the problem of content based image retrieval, where global and local shape similarity needs to be measured.
机译:统计形状模型(SSM)是从数据中获取的形状的统计表示,以研究形状的变化。形状建模的工作受到许多未解决的问题的束缚,例如,建模局部变化或全局变化的困难。 SSM已成功应用于医学图像应用,例如脑解剖分析。由于大脑结构是如此复杂,并且因受试者而异,因此识别形态变异性的方法可能对诊断和治疗有用。这项研究的主要目的是生成和开发统计形状模型,以分析形状的局部变化。在这种特定情况下,这项工作解决了需要进行有效形状分析的局部元素是什么的问题。在此,所提出的方法基于点分布模型,并结合了其他众所周知的技术。马尔可夫链蒙特卡罗方法;以及轮廓局部化问题的曲率尺度空间表示。同样,扩散图被用作光谱形状聚类工具,以识别在形状分析中有用的局部分区集。另外,解释了一种基于高斯金字塔和拉普拉斯金字塔的新颖的层次形状分析方法,并将其用于比较特征局部形状模型。对许多真实轮廓(例如动物,叶子和大脑白质轮廓)的实验结果已显示出,证明了所提出模型的有效性。这些结果表明,局部形状模型可以有效地建模生物结构形状的统计变化。特别是,该模型的开发提供了一种分析大脑图像和大脑形态计量学的方法。同样,该模型可以适应基于内容的图像检索问题,其中需要测量整体和局部形状相似性。

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