医学图像配准中各种进化方法的评价

S. Damas, O. Cordón, J. Santamaría
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引用次数: 4

摘要

在过去的几十年里,图像配准(IR)已经成为计算机视觉中一个非常活跃的研究领域。多年来,它已被广泛应用于从遥感到医学成像、人工视觉和计算机辅助设计等现实世界的问题。红外问题通常采用迭代方法来解决,而数值优化方法很可能陷入局部最优。近年来,人们提出了大量基于元启发式和进化计算范式的IR方法,并取得了显著的成果。在这篇文章中,我们的目标是对考虑进化算法的一些最知名的基于特征的红外方法进行初步的实验研究。为此,首先提出了红外框架,并简要介绍了一些突出的基于进化的红外建议。最后,针对具有挑战性的三维医学图像配准问题实例,选取了一些最具代表性的方法进行了基准测试。
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Evaluation of various evolutionary methods for medical image registration
In the last few decades, image registration (IR) has been established as a very active research area in computer vision. Over the years, it has been applied to a broad range of real-world problems ranging from remote sensing to medical imaging, artificial vision, and computer-aided design. IR has been usually tackled by iterative approaches considering numerical optimization methods which are likely to get stuck in local optima. Recently, a large number of IR methods based on the use of metaheuristics and evolutionary computation paradigms has been proposed providing outstanding results. In this contribution, we aim to develop a preliminary experimental study on some of the most recognized feature-based IR methods considering evolutionary algorithms. To do so, the IR framework is first presented and a brief description of some prominent evolutionary-based IR proposals are reviewed. Finally, a selection of some of the most representative methods are benchmarked facing challenging 3D medical image registration problem instances.
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