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Unsupervised Change Detection for Remote Sensing Images Based on Principal Component Analysis and Differential Evolution

机译:基于主成分分析和差分演化的遥感图像无监督变化检测

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This paper proposed a novel method for unsupervised change detection of remote sensing images using principal component analysis and differential evolution (PDECD). PDECD consists of two main steps. Firstly, an eigenvector space is generated by principal component analysis (PCA) of image blocks. Difference image is projected onto the eigenvector space to extract image local features, which is essentially composed of local smoothing feature and edge fidelity features. Then PDECD regards change detection as an optimal clustering problem and utilizes the differential evolution algorithm (DE) to search for the optimal change detection results without any priori knowledge. Compared with the existing methods, PDECD is not only robust to image noise, but also sensitive to small changed details. In addition, PDECD can avoid tracking to the local optima in change detection process and improve the detection performance due to the powerful global optimization capability of DE. Considering the image data belonging to two clusters cannot separated by sharp boundaries, so the Jm index of standard fuzzy clustering method is used as the objective function of DE. In order to improve the robustness and automatic detection capability of PDECD, control parameters of DE have been adjusted adaptively. Experiments conducted on real SAR and optical remote sensing images demonstrate the effectiveness of the proposed method.
机译:本文提出了一种使用主成分分析和差分演进(PDECD)的遥感图像的无监督变化检测的新方法。 PDECD由两个主要步骤组成。首先,通过图像块的主成分分析(PCA)产生特征向量空间。将差异图像投影到特征向量空间上以提取图像本地特征,其基本上由局部平滑特征和边缘保真特征组成。然后,PDECD将变更检测视为最佳聚类问题,并利用差分演进算法(DE)来搜索无需任何先验知识的最佳变化检测结果。与现有方法相比,PDECD不仅对图像噪声稳健,而且对小型更改的细节也很敏感。此外,PDECD可以避免在改变检测过程中跟踪本地Optima,并通过DE强大的全球优化能力提高检测性能。考虑到属于两个集群的图像数据不能通过尖锐边界分开,因此标准模糊聚类方法的JM指数用作DE的目标函数。为了提高PDECD的鲁棒性和自动检测能力,可自适应地调整DE的控制参数。在真实SAR和光学遥感图像上进行的实验证明了该方法的有效性。

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