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Multiscale Change Detection Method for Remote Sensing Images Based on Online Learning Framework

机译:基于在线学习框架的遥感图像多尺度变更检测方法

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Change detection for remote sensing images is very important for urban planning, disaster evaluation etc. Traditional detection methods include supervised and unsupervised learning algorithm. A novel semi-supervised multiscale change detection method based on online learning framework is presented in this paper. Firstly, mean-variance classifier and SVM classifier are trained at the different scales of 2*2 pixels block and original pixel respectively. Initial training set is extracted from the ground truth. Secondly, the difference image is obtained according to two phase remote sensing images, and arranged by the unit of 16*16 pixel block. Image blocks are input into the mean-variance classifier and SVM classier to be detected one by one, it is cascade connection between two classifiers. The error correction rules are used to choose the misclassified instances to retrain the classifiers. Experiment results show that the method in this paper can efficiently decrease the FN (false negative numbers) to improve the performance of change detection algorithm.
机译:遥感图像的变更检测对于城市规划,灾害评估等非常重要。传统的检测方法包括监督和无监督的学习算法。本文提出了一种基于在线学习框架的新型半监督多尺度变更检测方法。首先,平均方差分类器和SVM分类器分别在2 * 2像素块和原始像素的不同尺度上训练。初始训练集从地面真理中提取。其次,根据两个相位遥感图像获得差异图像,并由16 * 16像素块的单元布置。图像块被输入到平均值分类器和SVM Claser中,以便一个接一个地检测到,它是两个分类器之间的级联连接。错误校正规则用于选择错误分类的实例以重新编制分类器。实验结果表明,本文的方法可以有效地降低Fn(假阴性数)以提高变化检测算法的性能。

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