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Automatic target recognition in infrared image using morphological genetic filtering algorithm

机译:基于形态遗传滤波算法的红外图像目标自动识别

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A novel method for optimal morphological filtering parameters, namely the genetic training algorithm for morphological filters (GTAMF) is presented in this paper. GTAMF adopts new crossover and mutation operators called the curved cylinder crossover and master-slave mutation, to achieve optimal filtering parameters in a global searching. Experimental results show that this method is practical, easy to extend, and improves the performances of morphological filters. The operation of a morphological filter can be divided into two basic problems that include morphological operation and structuring element (SE) selection. The rules for morphological operations are predefined so the filter's properties depend merely on the selection of SE. By means of adaptive optimizing training, structuring elements possess the shape and structural characteristics of image targets, namely some information can be obtained by SE. Morphological filters formed in this way become certainly intelligent and can provide good filtering results and robust adaptability to image targets with clutter background.
机译:提出了一种优化形态学滤波参数的新方法,即形态学滤波的遗传训练算法(GTAMF)。 GTAMF采用了称为弧形圆柱交叉和主从突变的新交叉和变异算子,以在全局搜索中获得最佳过滤参数。实验结果表明,该方法实用,易于扩展,并且可以提高形态学过滤器的性能。形态过滤器的操作可以分为两个基本问题,包括形态操作和结构元素(SE)选择。形态操作的规则是预先定义的,因此过滤器的属性仅取决于SE的选择。通过自适应优化训练,结构元素具有图像目标的形状和结构特征,即可以通过SE获得一些信息。以这种方式形成的形态学过滤器无疑变得智能化,并且可以提供良好的过滤结果和对具有杂乱背景的图像目标的鲁棒适应性。

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