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An Approach to Multiple Change Detection in VHR Optical Images Based on Iterative Clustering and Adaptive Thresholding

机译:基于迭代聚类和自适应阈值的VHR光学图像多变化检测方法

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One of the most common approaches to unsupervised change detection (CD) in multispectral images is change vector analysis (CVA). CVA computes the multispectral difference image and exploits its statistical distribution in (hyper-) spherical coordinates by means of two steps: 1) magnitude and 2) direction thresholding. The two steps require assumptions on: 1) the model of class distributions and 2) the number of changes. However, both assumptions are seldom satisfied or difficult to formulate, especially when considering VHR images. Thus, we propose an approach to multiple CD in VHR optical images based on iterative clustering and adaptive thresholding in (hyper-) spherical coordinate. The proposed approach: 1) is distribution free; 2) is unsupervised; 3) automatically identifies the number of changes; and 4) is robust to noise. Results obtained on two multitemporal single-sensor and multisensor data sets, including images from WorldView-2 and QuickBird, corroborate the effectiveness of the proposed approach.
机译:多光谱图像中无监督变化检测(CD)的最常见方法之一是变化矢量分析(CVA)。 CVA通过以下两个步骤来计算多光谱差异图像并利用其在(超)球坐标中的统计分布:1)幅度和2)方向阈值。这两个步骤需要以下假设:1)类分布模型; 2)更改数量。但是,这两个假设很少满足或很难表述,尤其是在考虑VHR图像时。因此,我们提出了一种基于迭代聚类和(超)球坐标自适应阈值的VHR光学图像中多个CD的方法。建议的方法:1)是免费发行的; 2)无人监督; 3)自动识别变更次数;和4)耐噪声。在两个多时间单传感器和多传感器数据集(包括来自WorldView-2和QuickBird的图像)上获得的结果证实了该方法的有效性。

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