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Decision Fusion for the Classification of Urban Remote Sensing Images

机译:城市遥感影像分类的决策融合

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The classification of very high resolution remote sensing images from urban areas is addressed by considering the fusion of multiple classifiers which provide redundant or complementary results. The proposed fusion approach is in two steps. In a first step, data are processed by each classifier separately, and the algorithms provide for each pixel membership degrees for the considered classes. Then, in a second step, a fuzzy decision rule is used to aggregate the results provided by the algorithms according to the classifiers' capabilities. In this paper, a general framework for combining information from several individual classifiers in multiclass classification is proposed. It is based on the definition of two measures of accuracy. The first one is a pointwise measure which estimates for each pixel the reliability of the information provided by each classifier. By modeling the output of a classifier as a fuzzy set, this pointwise reliability is defined as the degree of uncertainty of the fuzzy set. The second measure estimates the global accuracy of each classifier. It is defined a priori by the user. Finally, the results are aggregated with an adaptive fuzzy operator ruled by these two accuracy measures. The method is tested and validated with two classifiers on IKONOS images from urban areas. The proposed method improves the classification results when compared with the separate use of the different classifiers. The approach is also compared with several other fuzzy fusion schemes.
机译:通过考虑融合提供冗余或互补结果的多个分类器,解决了来自城市地区的超高分辨率遥感影像的分类问题。所提出的融合方法分两个步骤。第一步,由每个分类器分别处理数据,并且算法为所考虑的类别提供每个像素隶属度。然后,在第二步中,根据分类器的能力,使用模糊决策规则来汇总算法提供的结果。在本文中,提出了在多类分类中组合来自多个分类器的信息的通用框架。它基于两种精度度量的定义。第一个是逐点度量,它为每个像素估计每个分类器提供的信息的可靠性。通过将分类器的输出建模为模糊集,此逐点可靠性定义为模糊集的不确定度。第二个度量估计每个分类器的整体准确性。它由用户先验定义。最后,通过这两个精度测度所确定的自适应模糊算子对结果进行汇总。使用两个分类器对来自市区的IKONOS图像进行了测试和验证。与不同分类器的单独使用相比,该方法改进了分类结果。还将该方法与其他几种模糊融合方案进行了比较。

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