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Orientation Estimation of Anatomical Structures in Medical Images for Object Recognition

机译:用于目标识别的医学图像中解剖结构的方向估计

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Recognition of anatomical structures is an important step in model based medical image segmentation. It provides pose estimation of objects and information about "where" roughly the objects are in the image and distinguishing them from other object-like entities. In,1 we presented a general method of model-based multi-object recognition to assist in segmentation (delineation) tasks. It exploits the pose relationship that can be encoded, via the concept of ball scale (b-scale), between the binary training objects and their associated grey images. The goal was to place the model, in a single shot, close to the right pose (position, orientation, and scale) in a given image so that the model boundaries fall in the close vicinity of object boundaries in the image. Unlike position and scale parameters, we observe that orientation parameters require more attention when estimating the pose of the model as even small differences in orientation parameters can lead to inappropriate recognition. Motivated from the non-Euclidean nature of the pose information, we propose in this paper the use of non-Euclidean metrics to estimate orientation of the anatomical structures for more accurate recognition and segmentation. We statistically analyze and evaluate the following metrics for orientation estimation: Euclidean, Log-Euclidean, Root-Euclidean, Procrustes Size-and-Shape, and mean Hermitian metrics. The results show that mean Hermitian and Cholesky decomposition metrics provide more accurate orientation estimates than other Euclidean and non-Euclidean metrics.
机译:解剖结构的识别是基于模型的医学图像分割中的重要步骤。它提供对象的姿态估计以及有关对象在图像中“大约”的位置的信息,并将它们与其他类似对象的实体区分开。在[1]中,我们提出了一种基于模型的多对象识别的通用方法,以协助进行分割(描绘)任务。它利用了可通过球尺度(b尺度)的概念在二进制训练对象及其关联的灰度图像之间进行编码的姿势关系。目的是将模型以单次拍摄的方式放置在给定图像中的正确姿势(位置,方向和比例)上,以使模型边界位于图像中对象边界的附近。与位置和比例参数不同,我们观察到在估计模型的姿态时需要更多地注意方向参数,因为即使方向参数之间的微小差异也会导致不正确的识别。基于姿势信息的非欧几里得性质,我们在本文中建议使用非欧几里得度量来估计解剖结构的方向,以实现更准确的识别和分割。我们对取向估计的以下指标进行统计分析和评估:欧几里得,对数欧几里得,根欧几里得,Procrustes大小和形状以及平均厄米特度量。结果表明,平均的Hermitian和Cholesky分解度量比其他Euclidean和非Euclidean度量提供了更准确的方向估计。

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