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Ant Colony Optimization Inspired Algorithm for 3D Object Segmentation into its Constituent Parts

机译:蚁群优化启发算法将3D对象分割为其组成部分

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摘要

This work focuses on the use of an Ant colony optimization (ACO) based approach to the problem of 3D object segmentation. The ACO metaheuristic uses a set of agents (artificial ants) to explore a search space. This kind of metaheuristic can be classified as a Natural computing non-deterministic technique, which is frequently used when the size of the search space makes the use of analytic mathematical tools unaffordable. The exploration is influenced by heuristic information, determined by each particular problem. Agents communicate with each other through the pheromone trails, which act as the common memory for the colony. In the approach presented, the agents start their exploration at the outer contour of an object. The final result is given after a certain number of generations, when the particular solutions of the agents converge to create the global paths followed by the colony. These paths coherently connect the object's high curvature areas, facilitating the segmentation process. The advantage of this convergence mechanism is that it avoids the problem of over-segmentation by detecting regions based on the global structure of the object and not just on local information.
机译:这项工作着重于使用基于蚁群优化(ACO)的方法来解决3D对象分割问题。 ACO元启发式方法使用一组代理(人工蚂蚁)来探索搜索空间。这种元启发法可以归类为自然计算非确定性技术,当搜索空间的大小使分析数学工具的使用变得难以承受时,经常使用这种元启发式技术。探索受启发式信息的影响,启发式信息由每个特定问题确定。代理通过信息素踪迹彼此通信,信息素踪迹是该群体的共同记忆。在提出的方法中,主体从物体的外轮廓开始探索。最终的结果是在一定数量的世代之后给出的,这时代理的特定解决方案会聚在一起以创建殖民地所遵循的全局路径。这些路径连贯地连接对象的高曲率区域,从而简化了分割过程。这种收敛机制的优势在于,它通过基于对象的全局结构而不是仅基于局部信息来检测区域,从而避免了过度分割的问题。

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