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Multi-Atlas Segmentation without Registration: A Supervoxel-based Approach

机译:多图册分割未经登记:基于supervoxel-a方法

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摘要

Multi-atlas segmentation is a powerful segmentation technique. It has two components: label transfer that transfers segmentation labels from prelabeled atlases to a novel image and label fusion that combines the label transfer results. For reliable label transfer, most methods assume that the structure of interest to be segmented have localized spatial support across different subjects. Although the technique has been successful for many applications, the strong assumption also limits its applicability. For example, multi-atlas segmentation has not been applied for tumor segmentation because it is difficult to derive reliable label transfer for such applications due to the substantial variation in tumor locations. To address this limitation, we propose a label transfer technique for multi-atlas segmentation. Inspired by the Superparsing work [], we approach this problem in two steps. Our method first oversegments images into homogeneous regions, called supervoxels. For a voxel in a novel image, to find its correspondence in atlases for label transfer, we first locate supervoxels in atlases that are most similar to the supervoxel the target voxel belongs to. Then, voxel-wise correspondence is found through searching for voxels that have most similar patches to the target voxel within the selected atlas supervoxels. We apply this technique for brain tumor segmentation and show promising results.
机译:多图集分割是一种强大的分割技术。它包括两个部分:标签转移,将分割标签从预先标记的地图集转移到新颖的图像;标签融合,合并标签转移结果。为了可靠地进行标签转移,大多数方法都假定要分割的目标结构在不同主题之间具有局部空间支持。尽管该技术已在许多应用中取得成功,但强有力的假设也限制了其适用性。例如,多图谱分割尚未应用于肿瘤分割,因为由于肿瘤位置的显着变化而难以为此类应用获得可靠的标记转移。为了解决这个限制,我们提出了一种用于多图谱分割的标签转移技术。受到[Superparsing]工作的启发,我们分两个步骤解决这个问题。我们的方法首先将图像过度分割成均匀区域,称为超体素。对于新颖图像中的体素,要在地图集中找到其对应关系以进行标签转移,我们首先在与目标体素所属的超体素最相似的图集中找到超体素。然后,通过在所选图册超体素内搜索与目标体素具有最相似斑块的体素,来找到体素方向的对应关系。我们将这种技术应用于脑肿瘤分割并显示出可喜的结果。

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  • 期刊名称 other
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  • 年(卷),期 -1(16),0 3
  • 年度 -1
  • 页码 535–542
  • 总页数 8
  • 原文格式 PDF
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