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Satellite Image Classification Using a Divergence-Based Fuzzy c-Means Algorithm

机译:基于散度的模糊c-均值算法的卫星图像分类

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A satellite image classifier scheme by using a Fuzzy c-Means (FcM) algorithm is proposed in this paper. The FcM algorithm adopted in this paper is a Gradient-based FcM with Divergence measure (GFcM(D)) and it utilizes the Divergence measure to exploit the statistical nature of the image data and thereby improves the classification accuracy. Experiments and results on a set of satellite images demonstrate that the proposed GFcM(D)-based classifier outperforms conventional algorithms such as the traditional Self-Organizing Map (SOM) and Fuzzy c-Means (FcM) in terms of classification accuracy.
机译:提出了一种基于模糊c均值(FcM)算法的卫星图像分类器方案。本文采用的FcM算法是一种基于梯度的FcM散度度量(GFcM(D)),它利用Divergence度量来利用图像数据的统计性质,从而提高了分类精度。在一组卫星图像上进行的实验和结果表明,基于GFcM(D)的分类器在分类精度方面优于传统算法,例如传统的自组织图(SOM)和模糊c均值(FcM)。

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