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首页> 外文期刊>European Journal of Remote Sensing >A class-based approach to classify PolSAR imagery using optimum classifier
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A class-based approach to classify PolSAR imagery using optimum classifier

机译:基于类的方法来使用最优分类器对Polsar图像进行分类

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Classification of Polarimetric SAR (PolSAR) imagery is still one of the challenges in active remote sensing applications. Although a large number of features and different classifiers have been proposed, no unique approach has been found to satisfy all of the images and classes yet. In this paper, given the extracted features from PolSAR data, a new class-based feature selection (CBFS) algorithm is proposed to find the most optimum features for each class. Maximizing the discrimination of each class from the others is the main contribution of the CBFS which yields distinctive features. The selected features are then employed by classifiers to generate different classification results. Finally, a new approach is developed to combine these classification results to produce the final land cover map. Five different classifiers of Wishart Maximum Likelihood, Gaussian Maximum Likelihood, Support Vector Machine, Multi Layer Perceptron and Fuzzy Inference System are also used for classification. Given the CBFS results, two different Radarsat-2 and AirSAR PolSAR data were classified. Selected features led to improvement of about 5% in producer accuracies in comparison with two well-known Genetic Algorithm Feature Selection (GAFS) and Prototype Space Feature Selection (PSFS) methods. Moreover, Comparison results demonstrate that the fuzzy classifiers could improve the accuracies about 3% if they are suitably constructed and well designed. The achieved higher overall accuracy for the final classified map shows the effectiveness of the proposed approach over the other compared classification procedures.
机译:Polarimetric SAR(POLSAR)图像的分类仍然是主动遥感应用中的挑战之一。虽然已经提出了大量的特征和不同的分类器,但没有发现任何独特的方法来满足所有图像和类别。在本文中,给定来自Polsar数据的提取特征,提出了一种新的基于类的特征选择(CBF)算法,以找到每个类的最佳功能。从其他方面最大化每个课程的歧视是CBF的主要贡献,它产生了独特的特征。然后由分类器采用所选特征以产生不同的分类结果。最后,开发了一种新方法来结合这些分类结果以产生最终的陆地覆盖图。五个不同的愿望分类器的最大可能性,高斯最大可能性,支持向量机,多层的Perceptron和模糊推理系统也用于分类。鉴于CBFS结果,分为两个不同的RADARSAT-2和AIRSAR POLSAR数据。与两个公知的遗传算法特征选择(GAF)和原型空间特征选择(PSF)方法相比,所选功能在生产者准确性的提高约5%。此外,比较结果表明,如果它们适当地构造和精心设计,则模糊分类器可以提高约3%的准确度。最终分类地图的总体精度达到了更高的总体准确性,显示了所提出的方法对其他比较的分类程序的有效性。

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