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Using adaptive genetic algorithms in the design of morphological filters in textural image processing

机译:使用自适应遗传算法设计纹理图像中的形态过滤器

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Abstract: An adaptive GA scheme is adopted for the optimal morphological filter design problem. The adaptive crossover and mutation rate which make the GA avoid premature and at the same time assure convergence of the program are successfully used in optimal morphological filter design procedure. In the string coding step, each string (chromosome) is composed of a structuring element coding chain concatenated with a filter sequence coding chain. In decoding step, each string is divided into 3 chains which then are decoded respectively into one structuring element with a size inferior to 5 by 5 and two concatenating morphological filter operators. The fitness function in GA is based on the mean-square-error (MSE) criterion. In string selection step, a stochastic tournament procedure is used to replace the simple roulette wheel program in order to accelerate the convergence. The final convergence of our algorithm is reached by a two step converging strategy. In presented applications of noise removal from texture images, it is found that with the optimized morphological filter sequences, the obtained MSE values are smaller than those using corresponding non-adaptive morphological filters, and the optimized shapes and orientations of structuring elements take approximately the same shapes and orientations as those of the image textons. !17
机译:摘要:针对最优形态滤波器设计问题,采用了自适应遗传算法。使遗传算法避免过早出现并同时确保程序收敛的自适应交叉和突变率已成功地用于最佳形态滤波器设计程序。在字符串编码步骤中,每个字符串(染色体)由与过滤器序列编码链连接的结构元素编码链组成。在解码步骤中,将每个字符串分为3个链,然后分别解码为一个大小小于5 x 5的结构元素和两个串联的形态滤波器操作符。 GA中的适应度函数基于均方误差(MSE)准则。在字符串选择步骤中,使用随机锦标赛程序代替简单的轮盘游戏程序,以加快收敛速度​​。我们算法的最终收敛是通过两步收敛策略实现的。在提出的从纹理图像中去除噪声的应用中,发现使用优化的形态学滤波器序列,获得的MSE值小于使用相应的非自适应形态学滤波器的MSE值,并且结构元素的优化形状和方向大致相同。形状和方向与图像纹理的形状和方向相同。 !17

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