首页> 外文会议>Conference on Medical Imaging 2008: Imaging Processing; 20080217-19; San Diego,CA(US) >Registration of Standardized Histological Images in Feature Space
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Registration of Standardized Histological Images in Feature Space

机译:特征空间中标准化组织图像的配准

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摘要

In this paper, we propose three novel and important methods for the registration of histological images for 3D reconstruction. First, possible intensity variations and nonstandardness in images are corrected by an intensity standardization process which maps the image scale into a standard scale where the similar intensities correspond to similar tissues meaning. Second, 2D histological images are mapped into a feature space where continuous variables are used as high confidence image features for accurate registration. Third, we propose an automatic best reference slice selection algorithm that improves reconstruction quality based on both image entropy and mean square error of the registration process. We demonstrate that the choice of reference slice has a significant impact on registration error, standardization, feature space and entropy information. After 2D histological slices are registered through an affine transformation with respect to an automatically chosen reference, the 3D volume is reconstructed by co-registering 2D slices elastically.
机译:在本文中,我们提出了3种新颖且重要的3D重建组织学图像配准方法。首先,通过强度标准化过程校正图像中可能的强度变化和非标准性,该标准化过程将图像比例映射到标准比例,其中相似的强度对应于相似的组织含义。其次,将2D组织学图像映射到特征空间,在该空间中将连续变量用作高置信度图像特征以进行精确配准。第三,我们提出了一种自动最佳参考切片选择算法,该算法基于图像熵和配准过程的均方误差提高了重建质量。我们证明参考切片的选择对配准误差,标准化,特征空间和熵信息有重大影响。在相对于自动选择的参考通过仿射变换对2D组织切片进行配准后,通过弹性共配2D切片来重建3D体积。

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