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Super-Resolution Mapping of Forests With Bitemporal Different Spatial Resolution Images Based on the Spatial-Temporal Markov Random Field

机译:基于时空马尔可夫随机场的双时空不同空间分辨率图像的森林超分辨率制图

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摘要

High deforestation rates necessitate satellite images for the timely updating of forest maps. Coarse spatial resolution remotely sensed images have wide swath and high temporal resolution. However, the mixed pixel problem lowers the mapping accuracy and hampers the application of these images. The development of remote sensing technology has enabled the storage of a great amount of medium spatial resolution images that recorded the historical conditions of the earth. The combination of timely updated coarse spatial resolution images and previous medium spatial resolution images is a promising technique for mapping forests in large areas with instant updating at low expense. Super-resolution mapping (SRM) is a method for mapping land cover classes with a finer spatial resolution than the input coarse resolution image. This method can reduce the mixed pixel problem of coarse spatial resolution images to a certain extent. In this paper, a novel spatial-temporal SRM based on a Markov random field, called STMRF_SRM, is proposed using a current coarse spatial resolution Moderate-Resolution Imaging Spectroradiometer image and a previous medium spatial resolution Landsat Thematic Mapper image as input. The proposed model encourages the spatial smoothing of land cover classes for spatially neighboring subpixels and keeps temporal links between temporally neighboring subpixels in bitemporal images. Results show that the proposed STMRF_SRM model can generate forest maps with higher overall accuracy and kappa value.
机译:高毁林率需要及时更新森林图的卫星图像。粗略的空间分辨率遥感影像具有广泛的扫描范围和较高的时间分辨率。但是,混合像素问题降低了映射精度,并阻碍了这些图像的应用。遥感技术的发展使得能够存储大量记录地球历史情况的中等空间分辨率图像。及时更新的粗略空间分辨率图像和先前的中等空间分辨率图像的组合是一种有前途的技术,可用于以低成本即时更新大面积森林。超分辨率映射(SRM)是一种用于以比输入的粗分辨率图像更精细的空间分辨率映射土地覆盖类别的方法。该方法可以在一定程度上减轻空间分辨率粗糙图像的混合像素问题。在本文中,提出了一种基于马尔可夫随机场的新型时空SRM,称为STMRF_SRM,它使用当前的粗略空间分辨率中分辨率成像光谱仪图像和先前的中等空间分辨率Landsat Thematic Mapper图像作为输入。所提出的模型鼓励空间上相邻的子像素的土地覆盖类别的空间平滑,并保持双时空图像中时间上相邻的子像素之间的时间联系。结果表明,所提出的STMRF_SRM模型可以生成具有更高总体精度和kappa值的森林图。

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