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Context-sensitive similarity based supervised image change detection

机译:基于上下文敏感相似度的监督图像变化检测

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摘要

To deal with the problem that traditional satellite remote sensing image change detection methods overestimate changed areas, a context-sensitive similarity based supervised satellite image change detection method was proposed. Both context-sensitive magnitude and direction of change in the vicinity of each pixel by means of local intercept and slope were exploited, and then SVM (support vector machine) with local intercept and slope was used in satellite image change detection. In the experiment for change detection of high resolution bi-temporal multispectral earthquake satellite images including building damage, the results showed that compared to standard SVM, the accuracy of satellite image change detection had been obviously improved, and overestimation of changed areas had been effectively reduced.
机译:针对传统卫星遥感图像变化检测方法过高估计变化区域的问题,提出了一种基于上下文敏感相似度的监督卫星图像变化检测方法。利用局部截距和斜率对每个像素附近的上下文敏感幅度和变化方向进行了研究,然后将具有局部截距和斜率的SVM(支持向量机)用于卫星图像变化检测。在对包括建筑物破坏在内的高分辨率双时相多光谱地震卫星图像进行变化检测的实验中,结果表明,与标准支持向量机相比,卫星图像变化检测的准确性有了明显提高,有效减少了对变化区域的过高估计。

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