A cluster-assisted global optimization method for high resolution medical image registration

Rongkai Zhao, G. Belford, M. Gabriel
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引用次数: 2

Abstract

Optimization is a key component of image registration. Due to the non-convexity and high computation cost of the objective function, a common tactic is to set an initial guess and then use multi-resolution or local optimization methods to find a local optimum of the objective function. For almost all local optimization methods, the initial location in the search space plays a critical role in the accuracy of the registration. Initial guesses are often obtained through data-specific methods. The paper offers a new hybrid optimization method assisted by a density-based clustering algorithm. The new method is less data-specific and more suitable for semi-automatic or automatic image registration. Global optimization does not guarantee timely convergence. A genetic algorithm is a component of our hybrid method; however, our method usually converges within a reasonable time. This new method has been applied to registering high resolution brain images.
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一种聚类辅助的高分辨率医学图像配准全局优化方法
优化是图像配准的关键环节。由于目标函数的非凸性和较高的计算成本,一种常用的策略是设置一个初始猜测,然后使用多分辨率或局部优化方法来寻找目标函数的局部最优。对于几乎所有的局部优化方法,搜索空间的初始位置对配准的准确性起着至关重要的作用。最初的猜测通常是通过特定于数据的方法获得的。本文提出了一种新的基于密度的聚类算法辅助的混合优化方法。该方法具有较低的数据特异性,更适合于半自动或自动图像配准。全局优化不能保证及时收敛。遗传算法是我们混合方法的一个组成部分;然而,我们的方法通常在合理的时间内收敛。这种新方法已被应用于高分辨率脑图像的配准。
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