Coral Reef Optimization for intensity-based medical image registration

E. Bermejo, M. Chica, S. Salcedo-Sanz, O. Cordón
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引用次数: 4

Abstract

Image registration (IR) is an extended and important problem in computer vision. It involves the transformation of different sets of image data having a shared content into a common coordinate system. Specifically, we will deal with the 3D intensity-based medical IR problem where the intensity distribution of the images is considered, one of the most complex and time consuming variants. The limitations of traditional IR methods have boomed the application of evolutionary and metaheuristic-based approaches to solve the problem, aiming to improve the performance of existing methods both in terms of accuracy and efficiency. In this contribution, we consider the use of a recently proposed bio-inspired meta-heuristic: the Coral Reef Optimization Algorithm (CRO). This novel algorithm simulates the natural phenomena underlying a coral reef, where different corals grow, reproduce and fight with other corals for space in the colony. CRO has recently obtained promising results in different real-world applications and we think its operation mode can properly cope with the 3D intensity-based medical IR problem. We adapt the algorithm to the real-coding problem nature and run an experimental setup tackling sixteen real-world problem instances. The new proposal is benchmarked with recent, state-of-the-art IR techniques. The results show that the CRO-based overcomes the state-of-the-art results in terms of its robustness and time efficiency.
基于强度的医学图像配准珊瑚礁优化
图像配准是计算机视觉领域的一个重要扩展问题。它涉及将具有共享内容的不同图像数据集转换为公共坐标系统。具体来说,我们将处理基于3D强度的医疗红外问题,其中考虑图像的强度分布,这是最复杂和耗时的变量之一。传统红外方法的局限性促使基于进化和元启发式方法的应用蓬勃发展,旨在提高现有方法在准确性和效率方面的性能。在这篇文章中,我们考虑使用最近提出的生物启发的元启发式:珊瑚礁优化算法(CRO)。这种新颖的算法模拟了珊瑚礁背后的自然现象,不同的珊瑚在珊瑚群中生长、繁殖并与其他珊瑚争夺空间。CRO最近在不同的实际应用中取得了可喜的结果,我们认为其运行模式可以很好地应对基于3D强度的医疗红外问题。我们将该算法适应于实际编码问题的性质,并运行了一个处理16个实际问题实例的实验设置。新提案以最新的、最先进的红外技术为基准。结果表明,该方法在鲁棒性和时间效率方面均优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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