Fast Automatic Registration Algorithm for Large Microscopy Images

Kun Huang, L. Cooper, A. Sharma, T. Pan
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引用次数: 15

Abstract

In this paper, a framework of fast registration algorithm for large microscopy images is presented. The rationale behind this approach is that the rigid transform gives the global mapping between the two images while the nonrigid components further refines the local matching of the pixels by taking care of local nonrigid distortion and variation. Therefore, to estimate rigid transform, the global features such as specific anatomical structures need to be used instead of point features which does not contain any global information. Then to estimate local nonrigid transform, the local features such as points are used. The algorithm is divided into two stages: the first stage is to find an accurate estimate of the rigid (Euclidean) transform between the two images. To achieve this goal, high level (global) features such as small regions with anatomical meanings such as clusters of cells or blood vessels are exploited for matching purposes. A voting scheme is used to confirm the matching and compute the rigid transformation between two consecutive images. This then transforms the foundation for the second stage of nonrigid registration. Using the accurate estimate of the rigid transform, a large number of point feature correspondence is established and used as control points for the nonrigid transform
大型显微镜图像的快速自动配准算法
本文提出了一种大型显微图像的快速配准算法框架。这种方法背后的基本原理是,刚性变换给出了两幅图像之间的全局映射,而非刚性分量通过处理局部非刚性失真和变化进一步细化了像素的局部匹配。因此,为了估计刚性变换,需要使用特定解剖结构等全局特征来代替不包含全局信息的点特征。然后利用点等局部特征估计局部非刚性变换。该算法分为两个阶段:第一阶段是找到两幅图像之间的刚性(欧几里得)变换的准确估计。为了实现这一目标,高水平(全局)特征,如具有解剖意义的小区域,如细胞簇或血管,被用于匹配目的。采用投票方案确定匹配并计算两幅连续图像之间的刚性变换。这就为第二阶段的非刚性注册奠定了基础。利用对刚体变换的精确估计,建立了大量的点特征对应关系,并将其作为非刚体变换的控制点
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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