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Linear intensity-based image registration by Markov random fields and discrete optimization

机译:马尔可夫随机场和离散优化的基于线性强度的图像配准

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摘要

We propose a framework for intensity-based registration of images by linear transformations, based on a discrete Markov random field (MRF) formulation. Here, the challenge arises from the fact that optimizing the energy associated with this problem requires a high-order MRF model. Currently, methods for optimizing such high-order models are less general, easy to use, and efficient, than methods for the popular second-order models.Therefore, we propose an approximation to the original energy by an MRF with tractable second-order terms. The approximation at a certain point p in the parameter space is the normalized sum of evaluations of the original energy at projections of p to two-dimensional subspaces. We demonstrate the quality of the proposed approximation by computing the correlation with the original energy, and show that registration can be performed by discrete optimization of the approximated energy in an iteration loop. A search space refinement strategy is employed over iterations to achieve sub-pixel accuracy, while keeping the number of labels small for efficiency. The proposed framework can encode any similarity measure is robust to the settings of the internal parameters, and allows an intuitive control of the parameter ranges. We demonstrate the applicability of the framework by intensity-based registration, and 2D-3D registration of medical images. The evaluation is performed by random studies and real registration tasks. The tests indicate increased robustness and precision compared to corresponding standard optimization of the original energy, and demonstrate robustness to noise. Finally, the proposed framework allows the transfer of advances in MRF optimization to linear registration problems.
机译:我们提出了一个基于离散马尔可夫随机场(MRF)公式的线性变换基于强度的图像配准的框架。在此,挑战来自以下事实:优化与此问题相关的能量需要高阶MRF模型。目前,用于优化此类高阶模型的方法不如流行的二阶模型的方法通用,易用且有效,因此,我们提出了具有可处理二阶项的MRF近似原始能量的方法。 。参数空间中某个点p处的近似值是p到二维子空间投影上原始能量的评估值的归一化总和。我们通过计算与原始能量的相关性证明了提出的近似方法的质量,并表明可以通过迭代循环中近似能量的离散优化来执行配准。在迭代中采用搜索空间优化策略以实现亚像素精度,同时保持较小的标签数量以提高效率。所提出的框架可以编码对内部参数设置具有鲁棒性的任何相似性度量,并允许对参数范围进行直观控制。我们通过基于强度的注册以及医学图像的2D-3D注册证明了该框架的适用性。评估是通过随机研究和实际注册任务执行的。测试表明,与原始能量的相应标准优化相比,鲁棒性和精度有所提高,并证明了对噪声的鲁棒性。最后,提出的框架允许将MRF优化的进展转移到线性配准问题。

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