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首页> 外文期刊>Information Sciences: An International Journal >Fuzzy clustering algorithms for unsupervised change detection in remote sensing images
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Fuzzy clustering algorithms for unsupervised change detection in remote sensing images

机译:模糊聚类算法在遥感图像无监督变化检测中的应用

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摘要

In this paper, we propose a context-sensitive technique for unsupervised change detection in multitemporal remote sensing images. The technique is based on fuzzy clustering approach and takes care of spatial correlation between neighboring pixels of the difference image produced by comparing two images acquired on the same geographical area at different times. Since the ranges of pixel values of the difference image belonging to the two clusters (changed and unchanged) generally have overlap, fuzzy clustering techniques seem to be an appropriate and realistic choice to identify them (as we already know from pattern recognition literatures that fuzzy set can handle this type of situation very well). Two fuzzy clustering algorithms, namely fuzzy c-means (FCM) and Gustafson-Kessel clustering (GKC) algorithms have been used for this task in the proposed work. For clustering purpose various image features are extracted using the neighborhood information of pixels. Hybridization of FCM and GKC with two other optimization techniques, genetic algorithm (GA) and simulated annealing (SA), is made to further enhance the performance. To show the effectiveness of the proposed technique, experiments are conducted on two multispectral and multitemporal remote sensing images. A fuzzy cluster validity index (Xie-Beni) is used to quantitatively evaluate the performance. Results are compared with those of existing Markov random field (MRF) and neural network based algorithms and found to be superior. The proposed technique is less time consuming and unlike MRF does not require any a priori knowledge of distributions of changed and unchanged pixels.
机译:在本文中,我们提出了一种上下文敏感技术,用于多时相遥感影像中的无监督变化检测。该技术基于模糊聚类方法,并通过比较在同一时间在同一地理区域上获取的两个图像来生成差异图像的相邻像素之间的空间相关性。由于属于两个聚类(变化的和不变的)的差异图像的像素值范围通常具有重叠,因此模糊聚类技术似乎是识别它们的合适且现实的选择(正如我们从模式识别文献中已经知道的那样,模糊集可以很好地处理这种情况)。在拟议的工作中,已使用两种模糊聚类算法,即模糊c均值(FCM)和Gustafson-Kessel聚类(GKC)算法。为了聚类的目的,使用像素的邻域信息提取各种图像特征。将FCM和GKC与其他两种优化技术(遗传算法(GA)和模拟退火(SA))进行杂交,以进一步提高性能。为了显示所提出技术的有效性,对两个多光谱和多时间遥感图像进行了实验。模糊聚类有效性指数(Xie-Beni)用于定量评估性能。将结果与现有的马尔可夫随机场(MRF)和基于神经网络的算法进行比较,发现效果更好。所提出的技术耗时较少,并且与MRF不同,它不需要任何有关变化和不变像素分布的先验知识。

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