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An unsupervised and spectral rule-based approach for change detection from multi-temporal remote sensing imagery

机译:基于无监督和基于频谱规则的多时相遥感影像变化检测方法

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In this study, we present an unsupervised change detection method using multi-spectral and multi-temporal remotely sensed imageries. This method is a pre-classification approach based on a spectral rule-based per-pixel classifier (SRC) developed by Baraldi et al. (2006). SRC is purely based on spectral-domain prior knowledge, such that no training or supervision process is needed. To explore its capability to detect change, we applied it in the Zhoushan Islands, Zhejiang, China. First, images were classified by SRC, and change detection was performed by two separate methods. One was the comparison of the merged categories obtained by reclassifying the pre-classification types of SRC. The other was comparing bi-temporal pre-classification types directly. The classification accuracy of the merged categories based on SRC was compared to the Maximum Likelihood Classifier and Support Vector Machine. The accuracy of the change detection was assessed and compared to results processed by the common post-classification comparison and change vector analysis methods. Results show that the change detection by directly comparing pre-classification types of SRC had the highest accuracy (overall accuracy was 90%, kappa coefficient was 0.81) among these methods and that the method of comparing merged categories was the worst (overall accuracy was 73%, kappa coefficient was only 0.46).
机译:在这项研究中,我们提出了一种使用多光谱和多时间遥感影像的无监督变化检测方法。这种方法是基于Baraldi等人开发的基于光谱规则的每像素分类器(SRC)的预分类方法。 (2006)。 SRC完全基于频谱域的先验知识,因此不需要培训或监督过程。为了探索其检测变化的能力,我们将其应用于中国浙江舟山群岛。首先,通过SRC对图像进行分类,并通过两种单独的方法进行变化检测。一种是比较通过对SRC的预分类类型进行重新分类而获得的合并类别。另一个是直接比较双时相预分类类型。将基于SRC的合并类别的分类准确性与最大似然分类器和支持向量机进行了比较。评估变更检测的准确性,并将其与通过常见的分类后比较和变更向量分析方法处理的结果进行比较。结果表明,通过直接比较SRC的预分类类型进行的更改检测在这些方法中具有最高的准确性(总体准确性为90%,kappa系数为0.81),并且比较合并类别的方法最差(总体准确性为73) %,卡帕系数仅为0.46)。

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