A Novel Approach of Image Fusion Techniques using Ant Colony Optimization

J. Kulkarni, R. Bichkar
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Abstract

Ant Colony Optimization (ACO) is a relatively high approach for finding a relatively strong solution to the problem of optimization. The ACO based image fusion technique is proposed. The objective function and distance matrix is designed for image fusion. ACO is used to fuse input images at the feature-level by learning the fusion parameters. It is used to select the fusion parameters according to the user-defined cost functions. This algorithm transforms the results into the initial pheromone distribution and seeks the optimal solution by using the features. As to relevant parameters for the ACO, three parameters (α, β, ρ ) have the greatest impact on convergence. If the values of α, β are appropriately increased, convergence can speed up. But if the gap between these two is too large, the precision of convergence will be negatively affected. Since the ACO is a random search algorithm, its computation speed is relatively slow.
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一种基于蚁群优化的图像融合新方法
蚁群优化算法(Ant Colony Optimization, ACO)是一种较高级的方法,用于寻找较强的优化问题解。提出了基于蚁群算法的图像融合技术。设计了图像融合的目标函数和距离矩阵。蚁群算法通过学习融合参数对输入图像进行特征级融合。用于根据用户自定义的代价函数选择融合参数。该算法将结果转化为初始信息素分布,并利用特征寻求最优解。对于蚁群算法的相关参数,α、β、ρ三个参数对收敛性影响最大。适当增大α、β值,可以加快收敛速度。但如果两者之间的差距过大,则会对收敛精度产生负面影响。由于蚁群算法是一种随机搜索算法,其计算速度相对较慢。
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