Gradient Intensity: A New Mutual Information-Based Registration Method

R. Shams, P. Sadeghi, R. Kennedy
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引用次数: 22

Abstract

Conventional mutual information (Ml)-based registration using pixel intensities is time-consuming and ignores spatial information, which can lead to misalignment. We propose a method to overcome these limitation by acquiring initial estimates of transformation parameters. We introduce the concept of 'gradient intensity' as a measure of spatial strength of an image in a given direction. We determine the rotation parameter by maximizing the MI between gradient intensity histograms. Calculation of the gradient intensity MI function is extremely efficient. Our method is designed to be invariant to scale and translation between the images. We then obtain estimates of scale and translation parameters using methods based on the centroids of gradient images. The estimated parameters are used to initialize an optimization algorithm which is designed to converge more quickly than the standard Powell algorithm in close proximity of the minimum. Experiments show that our method significantly improves the performance of the registration task and reduces the overall computational complexity by an order of magnitude.
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梯度强度:一种新的基于互信息的配准方法
传统的基于互信息(Ml)的配准使用像素强度,耗时且忽略空间信息,可能导致不对齐。我们提出了一种通过获取变换参数的初始估计来克服这些限制的方法。我们引入了“梯度强度”的概念,作为给定方向上图像空间强度的度量。我们通过最大化梯度强度直方图之间的MI来确定旋转参数。梯度强度MI函数的计算非常高效。我们的方法对图像之间的缩放和平移具有不变性。然后,我们使用基于梯度图像质心的方法获得尺度和平移参数的估计。利用估计的参数初始化一个优化算法,该算法在接近最小值时比标准鲍威尔算法收敛得更快。实验表明,该方法显著提高了配准任务的性能,并将整体计算复杂度降低了一个数量级。
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