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首页> 外文期刊>Computerized Medical Imaging and Graphics: The Official Jounal of the Computerized Medical Imaging Society >Adaptive reconstruction of pipe-shaped human organs from 3D ultrasonic volume.
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Adaptive reconstruction of pipe-shaped human organs from 3D ultrasonic volume.

机译:从3D超声体积自适应重建管状人体器官。

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In this paper, we introduce an adaptive scheme for reconstructing pipe-shaped human organs from the volume data acquired by 3D ultrasonic devices. No other methods but the contour-based scheme was used in the process of reconstructing the volume data into a 3D polygonal surface. In the first step, the algorithm extracts contours from the sampled slices of the volume data using the modified radial gradient method, in which the points are sampled on the boundary of the region of interest by radiating rays and connected through making use of the chain code algorithm. The contours are represented as the context-free grammar, and their parsing trees are traversed during the reconstruction. The generated polygonal surface is refined as the contours are being refined at the casting of the new rays between the existing rays to sample new points and to modify the contours according to these newly derived points. An adaptive scheme is achieved in casting the rays adaptively on the slices. The proposed algorithm is to be applied in reconstructing the pipe-shaped human organs, such as arteries or blood vessels, to a polygonal surface. In this paper, we present an innovative tiling algorithm that reconstructs pipe-shaped human organ from 3D ultrasonic datasets. A set of contours on slices through the ultrasonic datasets is extracted using a modified radial gradient method, and our algorithm tiles these to make a polygonal surface. The tiling is performed by traversing a set of parsing trees which represent the contours in a context-free grammar. This makes our algorithm more efficient than previous algorithms that reconstruct surfaces from a set of contours. The first step of the algorithm is to determine a contour on each slice of the 3D ultrasonic dataset. After removing unwanted artifacts from the slice by applying several noise-removing operators, the centroid pixel of region of interest on the slice is designated. A radial gradient method casts a set of rays from the centroid pixel to the boundary of the slice and computes the intersection points between the rays and the boundary cells of the object so as to determine the contours. The second step uses context-free grammar that represents the contours. Each edge of a contour can be classified into six categories according to its relation with the rays cast from the centroid pixel, and the contour can then be represented by a string in a context-free grammar whose terminal symbols are the six types of the edges. A polygonal surface between two contours is constructed by traversing the parsing trees of the contours and determining the corresponding edges. The third step is to refine the smooth surface constructed in the second step by casting more rays. Additional rays refine the contour by decomposing the edges on the contour and convert leaf node of the parsing tree to the root of a new sub-tree whose leaf nodes denote the newly created edges. Our algorithm was tested on a phantom object and an artery from the neck. Results show that the performance of the algorithm and the quality of the resulting surface are better than those of existing algorithms. We have implemented a navigation facility that allows users to investigate the pipe-shaped human organs interactively.
机译:在本文中,我们介绍了一种自适应方案,该方案可从3D超声设备采集的体数据中重建管状人体器官。在将体数据重建为3D多边形表面的过程中,除了基于轮廓的方案外没有其他方法。第一步,该算法使用改进的径向渐变方法从体积数据的采样切片中提取轮廓,其中通过辐射线在感兴趣区域的边界上对点进行采样,并通过使用链码进行连接算法。等高线表示为无上下文语法,并且在重构期间遍历了它们的解析树。当在现有光线之间投射新光线时对轮廓进行细化时,对生成的多边形表面进行细化,以采样新点并根据这些新派生的点修改轮廓。通过将射线自适应地投射在切片上,可以实现一种自适应方案。所提出的算法将用于将多边形的人体器官(如动脉或血管)重建到多边形表面。在本文中,我们提出了一种创新的切片算法,该算法可从3D超声波数据集中重建管状人体器官。使用改进的径向渐变方法提取通过超声波数据集的切片上的一组轮廓,并且我们的算法将这些轮廓平铺以形成多边形表面。通过遍历一组解析树的集合来执行平铺,这些解析树代表上下文无关文法中的轮廓。这使我们的算法比以前从一组轮廓重建曲面的算法更有效。该算法的第一步是确定3D超声数据集的每个切片上的轮廓。在通过应用几个噪声去除算子从切片中去除了不需要的伪像之后,指定了切片上感兴趣区域的质心像素。径向渐变方法将一组光线从质心像素投射到切片的边界,并计算光线与对象的边界单元之间的交点以确定轮廓。第二步使用表示上下文的无上下文语法。轮廓的每个边缘可以根据其与质心像素投射的射线的关系分为六类,然后可以用上下文无关文法中的字符串表示轮廓,其轮廓符号为边缘的六种类型。通过遍历轮廓的解析树并确定相应的边缘,可以构造两个轮廓之间的多边形表面。第三步是通过投射更多的光线来细化第二步中构造的光滑表面。其他光线通过分解轮廓上的边缘来细化轮廓,并将解析树的叶节点转换为新子树的根,该子树的叶节点表示新创建的边缘。我们的算法在幻影物体和颈部动脉上进行了测试。结果表明,该算法的性能和生成的表面质量均优于现有算法。我们已经实现了导航功能,该功能使用户可以交互方式调查管状人体器官。

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