Global optimization of deformable surface meshes based on genetic algorithms

Jussi Tohka
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引用次数: 23

Abstract

Deformable models are by their formulation able to solve the surface extraction problem from noisy volumetric image data encountered commonly in medical image analysis. However, this ability is shadowed by the fact that the minimization problem formulated is difficult to solve globally. Constrained global solutions are needed, if the amount of noise is substantial. This paper presents a new optimization strategy for deformable surface meshes based on real coded genetic algorithms. Real coded genetic algorithms are favored over binary coded ones because they can more efficiently be adapted to the particular problem domain. Experiments with synthetic images are performed. These demonstrate that the applied deformable model is able extract a surface from noisy volumetric image. Also the superiority of the proposed approach compared to a greedy minimization with multiple initializations is demonstrated.
基于遗传算法的可变形曲面网格全局优化
可变形模型通过其公式可以解决医学图像分析中常见的从有噪声的体图像数据中提取表面的问题。然而,这种能力被这样一个事实所掩盖,即所制定的最小化问题很难在全局范围内解决。如果噪音很大,就需要有约束的全球解决方案。提出了一种基于实数编码遗传算法的可变形曲面网格优化策略。实编码遗传算法比二进制编码遗传算法更受青睐,因为它们可以更有效地适应特定的问题领域。用合成图像进行了实验。结果表明,所采用的可变形模型能够从有噪声的体积图像中提取出表面。并证明了该方法相对于具有多个初始化的贪心最小化方法的优越性。
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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