论文标题
不确定性定量的合成孔径雷达图像形成
Synthetic Aperture Radar Image Formation with Uncertainty Quantification
论文作者
论文摘要
合成孔径雷达(SAR)是白天或晚上的任何天气成像方式,是遥感中重要的工具。大多数现有的SAR图像形成方法会产生最大的后验图像,该图像近似于未知地面场景的反射率。该单个图像没有量化应信任估计值的确定性。此外,找到模式通常不是审问后部的最佳方法。本文通过将采样框架引入SAR图像形成来解决这些问题。分层贝叶斯模型是使用共轭先验构建的,该模型直接融合了相干成像和有问题的斑点现象,该现象已知会降低图像质量。使用Gibbs采样器获得了所得的后验和噪声的参数。然后,这些样本可用于计算估计值,并得出其他统计数据,例如有助于不确定性定量的方差。后一种信息在SAR中尤为重要,在SAR中,即使是合成创建的示例,地面真相图像通常是未知的。使用现实世界数据的示例结果表明,此处引入SAR图像形成的基于抽样的方法提供了无参数的估计,具有改进的对比度和显着减少的斑点以及前所未有的不确定性量化信息。
Synthetic aperture radar (SAR) is a day or night any-weather imaging modality that is an important tool in remote sensing. Most existing SAR image formation methods result in a maximum a posteriori image which approximates the reflectivity of an unknown ground scene. This single image provides no quantification of the certainty with which the features in the estimate should be trusted. In addition, finding the mode is generally not the best way to interrogate a posterior. This paper addresses these issues by introducing a sampling framework to SAR image formation. A hierarchical Bayesian model is constructed using conjugate priors that directly incorporate coherent imaging and the problematic speckle phenomenon which is known to degrade image quality. Samples of the resulting posterior as well as parameters governing speckle and noise are obtained using a Gibbs sampler. These samples may then be used to compute estimates, and also to derive other statistics like variance which aid in uncertainty quantification. The latter information is particularly important in SAR, where ground truth images even for synthetically-created examples are typically unknown. An example result using real-world data shows that the sampling-based approach introduced here to SAR image formation provides parameter-free estimates with improved contrast and significantly reduced speckle, as well as unprecedented uncertainty quantification information.