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A Fusion Scheme for Joint Retrieval of Urban Height Map and Classification From High-Resolution Interferometric SAR Images

机译:基于高分辨率干涉SAR图像的联合提取城市高度图和分类的融合方案

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The retrieval of 3-D surface models of the Earth is a major issue of remote sensing. Some nice results have already been obtained at medium resolution with optical and radar imaging sensors. For instance, missions such as the Shuttle Radar Topography Mission (SRTM) or the SPOT HRS have provided accurate digital terrain models. The computation of a digital surface model (DSM) over urban areas is the new challenging issue. Since the recent improvements in radar image resolution, synthetic aperture radar (SAR) interferometry, which had already proved its efficiency at low resolution, has provided an accurate tool for urban 3-D monitoring. However, the complexity of urban areas and high-resolution SAR images prevents the straightforward computation of an accurate DSM. In this paper, an original high-level processing chain is proposed to solve this problem, and some results on real data are discussed. The processing chain includes three main steps, namely: (1) information extraction; (2) fusion; and (3) correction. Our main contribution addresses the merging step, where we aim at retrieving both a classification and a DSM while imposing minimal constraint on the building shapes. The joint derivation of height and class enables the introduction of more contextual information. As a consequence, more flexibility toward scene architecture is possible. First, the initial images (interferogram, amplitude, and coherence images) are converted into higher-level information mapping with different approaches (filtering, object recognition, or global classification). Second, these new images are merged into a Markovian framework to jointly retrieve an improved classification and a height map. Third, DSM and classification are improved by computing layover and shadow from the estimated DSM. Comparison between shadow/layover and classification allows some corrections. This paper mainly addresses the second step, while the two others are briefly explained and referred to already publis-hed papers. The results obtained on real images are compared to ground truth and indicate a very good accuracy in spite of limited image resolution. The major limit of DSM computation remains the initial spatial and altimetric resolutions that need to be made more precise
机译:检索地球的3D表面模型是遥感的主要问题。在光学和雷达成像传感器的中等分辨率下,已经获得了一些不错的结果。例如,航天飞机雷达地形任务(SRTM)或SPOT HRS等任务已经提供了准确的数字地形模型。在城市地区计算数字表面模型(DSM)是新的挑战性问题。自从雷达图像分辨率最近得到改进以来,合成孔径雷达(SAR)干涉测量法已经证明了其在低分辨率下的效率,它为城市3-D监视提供了准确的工具。但是,城市地区的复杂性和高分辨率SAR图像妨碍了精确DSM的直接计算。本文提出了一种原始的高级处理链来解决该问题,并讨论了有关实际数据的一些结果。处理链包括三个主要步骤,即:(1)信息提取; (2)融合; (3)修正。我们的主要贡献在于合并步骤,我们旨在检索分类和DSM,同时对建筑物形状施加最小的约束。身高和等级的共同推导可以引入更多的上下文信息。结果,在场景架构上可以有更大的灵活性。首先,将初始图像(干涉图,振幅和相干图像)转换为采用不同方法(滤波,对象识别或全局分类)的更高级别的信息映射。第二,将这些新图像合并到Markovian框架中,以共同检索改进的分类和高度图。第三,通过计算估计的DSM的覆盖和阴影来改进DSM和分类。阴影/覆盖层和分类之间的比较允许进行一些更正。本文主要针对第二步,而对其他两个步骤进行了简要说明并参考了已发表的论文。将真实图像上获得的结果与地面真实情况进行比较,尽管图像分辨率有限,但仍显示出非常好的准确性。 DSM计算的主要限制仍然是需要更精确的初始空间和高度分辨率

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