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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Genetic approaches for topological active nets optimization
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Genetic approaches for topological active nets optimization

机译:拓扑有源网优化的遗传方法

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摘要

The topological active nets (TANs) model is a deformable model used for image segmentation. It integrates features of region-based and edge-based segmentation techniques so it is able to Fit the contours of the objects and model their inner topology. Also, topological changes in its structure allow the detection of concave and convex contours, holes, and several objects in the scene. Since the model deformation is based on the minimization of an energy functional, the adjustment depends on the minimization algorithm. This paper presents two evolutionary approaches to the energy minimization problem in the TAN model. The first proposal is a genetic algorithm with ad hoc operators whereas the second approach is a hybrid model that combines genetic and greedy algorithms. Both evolutionary approaches improve the accuracy of the segmentation even though only the hybrid model allows topological changes in the model structure.
机译:拓扑活动网络(TANs)模型是用于图像分割的可变形模型。它集成了基于区域和基于边缘的分割技术的功能,因此能够拟合对象的轮廓并对内部拓扑进行建模。同样,其结构的拓扑变化允许检测场景中的凹凸轮廓,孔洞和多个对象。由于模型变形基于能量函数的最小化,因此调整取决于最小化算法。本文针对TAN模型中的能量最小化问题提出了两种进化方法。第一个建议是带有临时运算符的遗传算法,而第二个方法是结合了遗传和贪婪算法的混合模型。即使只有混合模型允许模型结构中的拓扑更改,这两种进化方法仍可以提高分割的准确性。

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