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Evaluation of Bayesian Despeckling and Texture Extraction Methods Based on Gauss–Markov and Auto-Binomial Gibbs Random Fields: Application to TerraSAR-X Data

机译:基于高斯 - 马尔可夫的贝叶斯检测和纹理提取方法评价及自动二项式Gibbs随机字段:应用于Terrasar-X数据的应用

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摘要

Speckle hinders information in synthetic aperture radar (SAR) images and makes automatic information extraction very difficult. The Bayesian approach allows us to perform the despeckling of an image while preserving its texture and structures. This model-based approach relies on a prior model of the scene. This paper presents an evaluation of two despeckling and texture extraction model-based methods using the two levels of Bayesian inference. The first method uses a Gauss-Markov random field as prior, and the second is based on an auto-binomial model (ABM). Both methods calculate a maximum a posteriori and determine the best model using an evidence maximization algorithm. Our evaluation approach assesses the quality of the image by means of the despeckling and texture extraction qualities. The proposed objective measures are used to quantify the despeckling performances of these methods. The accuracy of modeling and characterization of texture were determined using both supervised and unsupervised classifications, and confusion matrices. Real and simulated SAR data were used during the validation procedure. The results show that both methods enhance the image during the despeckling process. The ABM is superior regarding texture extraction and despeckling for real SAR images.
机译:散斑妨碍了合成孔径雷达(SAR)图像中的信息,使自动信息提取非常困难。贝叶斯方法使我们能够在保留其纹理和结构的同时执行图像的射击。这种基于模型的方法依赖于场景的先前模型。本文介绍了使用两级贝叶斯推断的两种机构基于机构和纹理提取模型的方法的评估。第一种方法使用高斯-Markov随机字段作为先前,第二种方法基于自动二项式模型(ABM)。两种方法计算最大后验,并使用证据最大化算法确定最佳模型。我们的评估方法通过考虑和纹理提取质量评估图像的质量。拟议的客观措施用于量化这些方法的检测性表现。使用监督和无监督的分类和混淆矩阵确定纹理的建模和表征的准确性。在验证程序期间使用真实和模拟的SAR数据。结果表明,两种方法在检测过程中增强了图像。 ABM对真实SAR图像的纹理提取和挖掘出来。

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