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引用次数: 3

摘要

本文研究了利用遗传算法(GA)进行图像重建的任务。我们考虑两种图像:彩色图像和黑白图像。不同类型的图像需要对遗传算法进行不同的编码。在彩色图像的情况下,我们基于RGB颜色模型。当考虑黑白图像时,我们使用二进制编码。遗传算法进化一个初始随机生成的个体群体(图像)。遗传算法的目标是找到与重建图像尽可能相似的解。我们展示了计算机实验的结果,并从中得出结论。
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Images Reconstruction with Use of a Genetic Algorithm
In this paper we investigate the task of images reconstruction with use of a genetic algorithm (GA). We consider two kinds of images: colored and black- and-white. Each kind of images requires different coding for a GA. In the case of colored images we base on the RGB color model. When black-and-white images are considered, we use binary coding. A genetic algorithm evolves an initial randomly generated population of individuals (images). The aim of a GA is to find a solution as similar to a reconstructed image as possible. We show results of computer experiments and formulate conclusions arising from them.
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