Robust Global Optimized Affine Registration Method for Microscopic Images of Biological Tissue

Yanan Lv, Xi Chen, Chang Shu, Hua Han
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引用次数: 3

Abstract

Affine registration can fit the non-rigid deformation of slices effectively, and it is widely used in volume reconstruction of biological tissue. But most of the existing affine registration methods are registered in a given sequence, which results in the accumulation of errors. In this paper, a global optimized affine registration method is proposed, which can be used in volume reconstruction. To eliminate the cumulative error, the affine transformation of all images is estimated simultaneously based on an energy function. A soft penalty on affine transformation is added to restrict the shearing of images. Experiments show that our method provides a more reliable registration result compared with sequential affine registration. It can solve the problems caused by the accumulation of errors. The registration result fits the deformation of slices well and preserves the rigidity of images.
生物组织显微图像的鲁棒全局优化仿射配准方法
仿射配准可以有效地拟合切片的非刚性变形,在生物组织的体积重建中得到了广泛的应用。但现有的仿射配准方法大多是按给定序列进行配准,导致误差累积。本文提出了一种全局优化仿射配准方法,可用于体重建。为了消除累积误差,基于能量函数同时估计所有图像的仿射变换。增加了仿射变换的软惩罚来限制图像的剪切。实验表明,与序列仿射配准相比,该方法的配准结果更加可靠。它可以解决由于错误积累而产生的问题。配准结果很好地拟合了切片的变形,保持了图像的刚性。
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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