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InSAR Phase Unwrapping based on a Combination of Markov Random Fields and Hypergeometric Phase Pdf Models

机译:基于Markov随机字段和超距离相位PDF模型的组合的Insar相位展开

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In this paper, we propose a new Bayesian estimation-based algorithm for two dimensional phase unwrapping of discontinuous phase fields with noisy principal values. The proposed algorithm uses the Markov random field models to build the prior distribution, so the unwrapping problem became equivalent to a minimization of an energy function. Our main contribution in this work is to propose a modification to the classical quadratic potential function, which enforces a global smoothness condition, so that the phase jumps, which result from the phase discontinuities, contribution to the energy are mitigated. This was possible throw weighting the classical quadratic potential function by the probability of occurrence of these jumps which decrease when they increase. Theoretically, this probability follows an hypergeometric distribution which can be approximated as a Gaussian one in order to make easier mathematical manipulations. An analytical expression for the minimization automate was derived.
机译:在本文中,我们提出了一种新的贝叶斯估计的基于估计的三维相位展开,具有嘈杂的主值的不连续阶段展开。所提出的算法使用Markov随机字段模型来构建先前分配,因此解映射问题变得相当于能量函数的最小化。我们在这项工作中的主要贡献是提出对经典二次潜在功能的修改,该功能强制实施全局平滑度,因此减轻了由相位不连续性,对能量贡献产生的阶段跳跃。这可能通过这些跳跃的发生概率来投掷古典二次潜在功能,这些跳跃在增加时降低。从理论上讲,这种概率遵循可以近似作为高斯的分布,以便更容易地进行数学操纵。衍生出最小化自动化的分析表达。

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