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AGRICULTURAL LAND CLASSIFICATION BASED ON STATISTICAL ANALYSIS OF FULL POLARIMETRIC SAR DATA

机译:基于全偏振SAR数据统计分析的农业土地分类

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The discrimination capability of Polarimetric Synthetic Aperture Radar (PolSAR) data makes them a unique source of information with a significant contribution in tackling problems concerning environmental applications. One of the most important applications of these data is land cover classification of the earth surface. These data type, make more detailed classification of phenomena by using the physical parameters and scattering mechanisms. In this paper, we have proposed a contextual unsupervised classification approach for full PolSAR data, which allows the use of multiple sources of statistical evidence. Expectation-Maximization (EM) classification algorithm is basically performed to estimate land cover classes. The EM algorithm is an iterative algorithm that formalizes the problem of parameters estimation of a mixture distribution. To represent the statistical properties and integrate contextual information of the associated image data in the analysis process we used Markov random field (MRF) modelling technique. This model is developed by formulating the maximum posteriori decision rule as the minimization of suitable energy functions. For select optimum distribution which adapts the data more efficiently we used Mellin transform which is a natural analytical tool to study the distribution of products and quotients of independent random variables. Our proposed classification method is applied to a full polarimetric L-band dataset acquired from an agricultural region in Winnipeg, Canada. We evaluate the classification performance based on kappa and overall accuracies of the proposed approach and compared with other well-known classic methods.
机译:Polariemetric合成孔径雷达(POLSAR)数据的判别能力使它们成为一个独特的信息来源,具有解决环境应用问题的问题。这些数据的最重要应用之一是地球表面的土地覆盖分类。这些数据类型通过使用物理参数和散射机制来制作更详细的现象分类。在本文中,我们提出了一种关于全文无监督的分类方法,用于完整的Polsar数据,这允许使用多种统计证据来源。期望 - 最大化(EM)分类算法基本上执行估计陆地覆盖类。 EM算法是一种迭代算法,其形式地形成混合分布的参数估计问题。表示统计属性并在分析过程中集成相关图像数据的上下文信息,我们使用Markov随机字段(MRF)建模技术。通过将最大后验决策规则制定为最小化合适的能量功能来开发该模型。对于选择的最佳分布,可以更有效地使用Mellin变换,这是一种自然分析工具来研究独立随机变量的产品和商的分布。我们所提出的分类方法适用于加拿大温尼伯农业区获取的全偏振L波段数据集。我们根据κ和拟议方法的整体精度评估分类性能,并与其他公知的经典方法相比。

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