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Generating a series of fine spatial and temporal resolution land cover maps by fusing coarse spatial resolution remotely sensed images and fine spatial resolution land cover maps

机译:通过融合粗糙的空间分辨率遥感图像和精细的空间分辨率土地覆盖图,生成一系列精细的空间和时间分辨率土地覆盖图

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摘要

Studies of land cover dynamics would benefit greatly from the generation of land cover maps at both fine spatial and temporal resolutions. Fine spatial resolution images are usually acquired relatively infrequently, whereas coarse spatial resolution images may be acquired with a high repetition rate but may not capture the spatial detail of the land cover mosaic of the region of interest. Traditional image spatial–temporal fusion methods focus on the blending of pixel spectra reflectance values and do not directly provide land cover maps or information on land cover dynamics. In this research, a novel Spatial–Temporal remotely sensed Images and land cover Maps Fusion Model (STIMFM) is proposed to produce land cover maps at both fine spatial and temporal resolutions using a series of coarse spatial resolution images together with a few fine spatial resolution land cover maps that pre- and post-date the series of coarse spatial resolution images. STIMFM integrates both the spatial and temporal dependences of fine spatial resolution pixels and outputs a series of fine spatial–temporal resolution land cover maps instead of reflectance images, which can be used directly for studies of land cover dynamics. Here, three experiments based on simulated and real remotely sensed images were undertaken to evaluate the STIMFM for studies of land cover change. These experiments included comparative assessment of methods based on single-date image such as the super-resolution approaches (e.g., pixel swapping-based super-resolution mapping) and the state-of-the-art spatial–temporal fusion approach that used the Enhanced Spatial and Temporal Adaptive Reflectance Fusion Model (ESTARFM) and the Flexible Spatiotemporal DAta Fusion model (FSDAF) to predict the fine-resolution images, in which the maximum likelihood classifier and the automated land cover updating approach based on integrated change detection and classification method were then applied to generate the fine-resolution land cover maps. Results show that the methods based on single-date image failed to predict the pixels of changed and unchanged land cover with high accuracy. The land cover maps that were obtained by classification of the reflectance images outputted from ESTARFM and FSDAF contained substantial misclassification, and the classification accuracy was lower for pixels of changed land cover than for pixels of unchanged land cover. In addition, STIMFM predicted fine spatial–temporal resolution land cover maps from a series of Landsat images and a few Google Earth images, to which ESTARFM and FSDAF that require correlation in reflectance bands in coarse and fine images cannot be applied. Notably, STIMFM generated higher accuracy for pixels of both changed and unchanged land cover in comparison with other methods.
机译:土地覆盖动力学的研究将受益于在精细的空间和时间分辨率下生成土地覆盖图。精细的空间分辨率图像通常相对较少地获取,而粗略的空间分辨率图像则可以高重复率获取,但可能无法捕获感兴趣区域的土地覆盖镶嵌的空间细节。传统的图像时空融合方法着重于像素光谱反射率值的融合,而不直接提供土地覆盖图或有关土地覆盖动态的信息。在这项研究中,提出了一种新颖的时空遥感图像和土地覆盖图融合模型(STIMFM),以使用一系列粗略的空间分辨率图像以及一些精细的空间分辨率来生成具有良好的空间和时间分辨率的土地覆盖图。一系列粗略的空间分辨率图像之前和之后的土地覆盖图。 STIMFM整合了精细空间分辨率像素的时空相关性,并输出了一系列精细时空分辨率的土地覆盖图,而不是反射率图像,可直接用于研究土地覆盖动力学。在此,基于模拟和真实遥感图像进行了三个实验,以评估STIMFM用于土地覆被变化的研究。这些实验包括对基于单日图像的方法的比较评估,例如超分辨率方法(例如,基于像素交换的超分辨率映射)和使用增强型图像的最新时空融合方法。时空自适应反射融合模型(ESTARFM)和灵活时空DAta融合模型(FSDAF)预测高分辨率图像,其中最大似然分类器和基于集成变化检测和分类方法的自动土地覆盖更新方法是然后应用于生成高分辨率的土地覆盖图。结果表明,基于单日影像的方法无法准确地预测土地覆被变化和不变的像素。通过对从ESTARFM和FSDAF输出的反射图像进行分类而获得的土地覆盖图存在严重的误分类,并且改变了土地覆盖的像素的分类精度要低于未改变土地覆盖的像素的分类精度。此外,STIMFM还根据一系列Landsat图像和一些Google Earth图像预测了精细的时空分辨率土地覆盖图,无法将ESTARFM和FSDAF应用于需要粗略和精细图像中反射带相关的ESTARFM和FSDAF。值得注意的是,与其他方法相比,STIMFM对于变化和不变的土地覆被像素产生了更高的精度。

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