Change detection is an important synthetic aperture radar (SAR) application, usually used to detect changes on the ground scene measurements in different moments in time. Traditionally, change detection algorithm (CDA) is mainly designed for two synthetic aperture radar (SAR) images retrieved at different instants. However, more images can be used to improve the algorithms performance, witch emerges as a research topic on SAR change detection. Image stack information can be treated as a data series over time and can be modeled by autoregressive (AR) models. Thus, we present some initial findings on SAR change detection based on image stack considering AR models. Applying AR model for each pixel position in the image stack, we obtained an estimated image of the ground scene which can be used as a reference image for CDA. The experimental results reveal that ground scene estimates by the AR models is accurate and can be used for change detection applications.
翻译:变化探测是一种重要的合成孔径雷达(SAR)应用,通常用于探测不同时段地面场景测量的变化。传统上,变化探测算法(CDA)主要为在不同瞬间检索到的两种合成孔径雷达图像设计。然而,可以使用更多的图像来改进算法的性能,巫术作为SAR变化探测的研究课题出现。图像堆藏信息可被视为一个数据序列,可被自动递减模型模拟。因此,我们根据考虑AR模型的图像堆,根据图像堆对合成孔径雷达变化探测的一些初步发现。对图像堆中的每个像素位置应用AR模型,我们获得了地面场景的估计图像,可用作CDA的参考图像。实验结果显示,AR模型对地面的估计数是准确的,可用于改变探测应用。