Improved robustness of 3D CT to 2D fluoroscopy image registration using log polar transforms

M. Akter, A. Lambert, M. Pickering, J. M. Scarvell, Paul N. Smith, Fariha Tabassuma, Mahamud Tariq Rashid
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Abstract

Automatic image registration algorithms that rely on a gradient descent based approach may fail when the initial misalignment between objects is large. The registration task is even more difficult for multi-modal images because of the non-linear relationship between the pixel intensities in the images to be aligned. In this paper we will present a multi-modal image registration algorithm which successfully registers 3D CT to 2D fluoroscopy data for large initial displacements between the images. The approach uses the conditional means (CM) of the joint probability distribution of the images to establish a model linear relationship between the pixel intensities of the images and then applies log-polar transforms (LPT) in the frequency domain to estimate the in-plane scale and rotation changes between the images. Our experimental results show that the proposed approach can increase the range of initial displacements for which the algorithm is able successfully register images by a factor of 4 when compared to the best of the existing gradient-descent based approaches.
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利用对数极坐标变换改进三维CT对二维透视图像配准的鲁棒性
基于梯度下降方法的图像自动配准算法在初始目标偏差较大时可能会失败。由于待对齐图像中像素强度之间的非线性关系,多模态图像的配准任务更加困难。在本文中,我们将提出一种多模态图像配准算法,该算法成功地将3D CT与2D透视数据注册为图像之间的大初始位移。该方法利用图像联合概率分布的条件均值(CM)建立图像像素强度之间的模型线性关系,然后在频域应用对数极坐标变换(LPT)估计图像之间的平面内尺度和旋转变化。我们的实验结果表明,与现有的基于梯度下降的最佳方法相比,所提出的方法可以将算法能够成功配准图像的初始位移范围增加4倍。
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