基于自动质量函数估计的模糊c均值遥感图像变化检测算法

Fatma Haouas, B. Solaiman, Z. B. Dhiaf, A. Hamouda
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引用次数: 1

摘要

本文提出了一种自动质量函数估计和焦点元选择的新方法,作为应用Dempster-Shafer理论(DST)的基础步骤。其思想是使用通过应用Fuzzy-C-Means算法(FCM)获得的质心和隶属度分布来定义质量函数。所提出的方法允许找到具有最高不确定性和模糊性的复合焦元。将所提出的质量函数估计方法集成到DST后分类过程中,对多光谱、多时间图像进行变化检测实验。本文提出的变化检测系统具有多级缺陷处理的特点,其中首先用FCM建模模糊度,然后在质量函数估计步骤中处理不确定性和不精度。通过应用该方法在两幅陆地卫星图像中寻找变换区域,我们获得了较高的分类率,证明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic mass function estimation based Fuzzy-C-Means algorithm for remote sensing images change detection
In this paper, we present a new method for automatic mass function estimation and focal elements selection as a fundamental step to apply the Dempster-Shafer Theory (DST). The idea is to use the centroids and membership distributions obtained by applying the Fuzzy-C-Means algorithm (FCM) to define the mass function. The proposed method allows finding composite focal elements that represent the highest uncertainty and ambiguity. Experiments were conduced on multi-spectral and multi-temporal images for the purpose of change detection by integrating the proposed method of mass function estimation in a process of post-classification by DST. The proposed system of change detection is characterised by a multi-level of imperfection handling where the ambiguity is modelled firstly by FCM, then the uncertainty and the imprecision are handled in the step of mass function estimation. The effectiveness of the proposed methodology is demonstrated by applying it to find transformed region within two landsat images where we obtained high rates of classifications.
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