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Genetic algorithm based feature selection for target detection in SAR images

机译:基于遗传算法的SAR图像目标检测特征选择

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摘要

A genetic algorithm (GA) approach is presented to select a set of features to discriminate the targets from the natural clutter false alarms in SAR images. Four stages of an automatic target detection system are developed: the rough target detection, feature extraction from the potential target regions, GA based feature selection and the final Bayesian classification. A new fitness function based on minimum description length principle (MDLP) is proposed to drive GA and it is compared with three other fitness functions. Experimental results show that the new fitness function outperforms the other three fitness functions and the GA driven by it selected a good subset of features to discriminale the targets from clutters effectively.
机译:提出了一种遗传算法(GA)方法来选择一组特征,以将目标与SAR图像中的自然杂波错误警报区分开。开发了自动目标检测系统的四个阶段:粗略目标检测,从潜在目标区域中提取特征,基于GA的特征选择和最终的贝叶斯分类。提出了一种基于最小描述长度原理(MDLP)的适应度函数来驱动遗传算法,并与其他三个适应度函数进行了比较。实验结果表明,新的适应度函数优于其他三个适应度函数,并且由它驱动的遗传算法选择了很好的特征子集来有效地将目标与杂波区分开。

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