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Change Detection in Semantic Level for SAR Images

机译:SAR图像语义级别的改变检测

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Considering that the traditional change detection algorithms only focus on extracting the change area but ignore the change content identification, a novel change detection framework for synthetic aperture radar (SAR) images is proposed. The framework integrates the merits of unsupervised and supervised learning to detect changes in semantic level. First, the residual convolutional auto-encoder (RCAE) is designed to convert SAR image slices to the histogram representation. Then, we calculate the difference vectors and extract the change area by their norms. Finally, we classify the difference vectors of change region and identify the content of change. Experimental results indicate that the proposed method achieves significantly performance improvement over existing algorithms.
机译:考虑到传统的变化检测算法仅专注于提取变化区域但忽略改变内容识别,提出了一种新的改变孔径雷达(SAR)图像的改变检测框架。该框架集成了无监督和监督学习的优点来检测语义级别的变化。首先,剩余卷积自动编码器(RCAE)旨在将SAR图像切片转换为直方图表示。然后,我们计算差值向量并通过其规范提取变化区域。最后,我们分类改变区域的差分向量并确定变革内容。实验结果表明,该方法通过现有算法实现了显着的性能改进。

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