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A fuzzy neural network to SAR image classification

机译:模糊神经网络在SAR图像分类中的应用

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摘要

Recently, neural networks have been increasingly applied to remote sensing imagery classification. The conventional neural network classifier performs learning from the representative information within a problem domain on a one-pixel-one-class basis; therefore, class mixture and the degree of membership of a pixel are generally not taken into account, often resulting in a poor classification accuracy. Based on the framework of a dynamic learning neural network (DL), this communications proposes a fuzzy version (FDL) based on two steps: network representation of fuzzy logic and assignment of membership. Comparisons between the DL and FDL are made by applying both neural networks to SAR image classification. Experimental results show that the FDL has faster convergence rate than that of DL. In addition, the separability between similar classes is improved. Moreover, the classification results match better with ground truth.
机译:最近,神经网络已越来越多地应用于遥感影像分类。常规的神经网络分类器以一像素一类的基础从问题域内的代表性信息中进行学习。因此,通常不考虑类别混合和像素的隶属度,这通常导致较差的分类准确性。该通信基于动态学习神经网络(DL)的框架,基于两个步骤提出了一个模糊版本(FDL):模糊逻辑的网络表示和成员资格的分配。 DL和FDL之间的比较是通过将两种神经网络应用于SAR图像分类进行的。实验结果表明,FDL具有比DL更快的收敛速度。另外,改善了相似类别之间的可分离性。此外,分类结果更符合地面实况。

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