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Spatial content understanding of very high resolution synthetic aperture radar images

机译:超高分辨率合成孔径雷达图像的空间内容理解

摘要

Availability of large amounts of very high resolution (metric-resolution) remote sensing images from the last generation synthetic aperture radar (SAR) satellites is attracting new studies. In order to search and retrieve relevant images from large-scale databases, new techniques for automatically analyzing, interpreting and indexing SAR images are required. The methods developed for this purposes in the past were based on the understanding speckle characteristics in SAR images. The focus has been generally on the model-based textural parameter estimation in the amplitude-envelope of SAR images, such as parametric Gibbs-based methods in the Bayesian framework. Such methods were largely successful under the assumption of stationarity of the signal in an analyzing window of convenient size on images with resolution of the order of tens of meters. The challenge we encounter in metric-resolution SAR images is the presence of a very high order of details encapsulating a non-stationarity, where model-based parameter estimation becomes inaccurate. This constraint encourages us to focus on nonparametric strategies while employing phase information to transform SAR images in a suitable space. Demonstrating the advantages and relevance of the phase information embedded in complex-valued SAR images over the use of the mere amplitude-envelope for such strategies is an underlying contribution of this thesis.The importance of phase information is advocated with a proposed method of multiple sublook decomposition (MSLD). This method generates hyper-images from the spectral analysis of complex valued SAR images enabling the visual exploration of targets. Subsequently, a chirplet-derived transform- the fractional Fourier transform (FrFT) has been found to be a true SAR relevant multi-scale approach, where scaling is carried out in the phase. A proposed non-parametric feature descriptor based on the use of second-kind statistical measures (logarithmic-cumulants) estimated over the amplitude-envelope of the FrFT coefficients exhibits enhanced feature space separability for improved indexing.An experimental benchmarking database is generated on single look complex (SLC) spotlight mode TerraSAR-X images for the validation of the proposed FrFT-based nonparametric technique in comparison to the existing methods. A robust methodological classification framework has been proposed for the evaluation and comparison of the studied algorithms.
机译:来自上一代合成孔径雷达(SAR)卫星的大量超高分辨率(公制分辨率)遥感图像的可用性吸引了新的研究。为了从大型数据库中搜索和检索相关图像,需要用于自动分析,解释和索引SAR图像的新技术。过去为此目的而开发的方法是基于了解SAR图像中的斑点特征。重点通常放在SAR图像幅度包络中基于模型的纹理参数估计上,例如贝叶斯框架中基于参数Gibbs的方法。假设信号在具有数十米量级分辨率的图像上的方便大小的分析窗口中处于平稳状态,则这种方法在很大程度上是成功的。在度量分辨率SAR图像中,我们遇到的挑战是存在大量非平稳性细节,其中基于模型的参数估计变得不准确。这种约束条件鼓励我们专注于非参数策略,同时利用相位信息在适当的空间中变换SAR图像。通过简单的幅度包络证明了在复杂值SAR图像中嵌入相位信息的优势和相关性是本论文的潜在贡献。分解(MSLD)。该方法从复杂值SAR图像的光谱分析中生成超图像,从而可以对目标进行视觉探索。随后,a线性变换-分数阶傅里叶变换(FrFT)被发现是与SAR相关的真正多尺度方法,其中在该阶段进行缩放。基于在FrFT系数的幅度包络上估计的第二种统计量度(对数累积量),提出的非参数特征描述符显示出增强的特征空间可分离性,从而改善了索引编制。复杂(SLC)聚光灯模式TerraSAR-X图像,与现有方法相比,可以验证所提出的基于FrFT的非参数技术。一个健壮的方法分类框架已被提出来评估和比较研究算法。

著录项

  • 作者

    Singh Jagmal;

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  • 年度 2014
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  • 原文格式 PDF
  • 正文语种 eng
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