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A Image Segmentation Method of Improved Ant Colony Algorithm for the Manipulator Self-recognition Target

机译:一种机械手自识目标改进蚁群算法的图像分割方法

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According to the requirements of efficient image segmentation for the manipulator self-recognition target, a method of image segmentation based on improved ant colony algorithm is proposed in the paper. In order to avoid segmentation errors by local optimal solution and the stagnation of convergence, ant colony algorithm combined with immune algorithm are taken to traversing the whole image, which uses pheromone as standard. Further, immunization selection through vaccination optimizes the heuristic information, then it improves the efficiency of ergodic process, and shortens the time of segmentation effectively. Simulation and experimental of image segmentation result shows that this algorithm can get better effect than generic ant colony algorithm, at the same condition, segmentation time is shortened by 6.8%.
机译:根据操纵器自识目标的有效图像分割的要求,提出了一种基于改进的蚁群算法的图像分割方法。为了避免通过局部最佳解决方案和收敛性停滞的分割误差,将与免疫算法结合的蚁群算法遍历整个图像,使用信息素作为标准。此外,通过疫苗接种免疫选择优化启发式信息,然后它提高了ergodic过程的效率,从而有效地缩短了分割的时间。图像分割结果的仿真和实验表明,该算法可以比通用蚁群算法更好地效果,在相同的条件下,分段时间缩短了6.8%。

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