Hierarchical classification of SAR data using a Markov random field model

Melba M. Crawford, M. R. Ricard
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引用次数: 9

Abstract

A general framework is presented for classifying coastal environments using synthetic aperture radar (SAR) data. This framework addresses two main issues associated with the accurate classification of SAR data: 1) the variability in radar backscatter of a given pixel caused by the presence of speckle in the imagery and 2) the characteristic decrease in intensity as a function of incidence angle. To combat the effect of speckle on a given pixel's backscatter, a Markov random field (MRF) model is used to incorporate contextual information from the imagery by considering neighbor pixel statistics in the classification process. To address the class-specific backscatter as a function of angle, a two-level classifier is considered to compensate for the highly variable water class and the less influenced land classes. Preliminary results are shown from the hierarchical MRF-based classifier and are compared to single level MRF and radial basis function (RBF) classifiers. For the test site presented, classification accuracy only improves slightly in using the hierarchical architecture, but does show the potential for application to coastal areas with larger percentages of upland and urban land cover types.
利用马尔科夫随机场模型对SAR数据进行分层分类
提出了利用合成孔径雷达(SAR)数据进行海岸环境分类的一般框架。该框架解决了与SAR数据准确分类相关的两个主要问题:1)由于图像中存在散斑而导致的给定像素的雷达后向散射的变异性;2)强度随入射角的函数特征下降。为了对抗散斑对给定像素后向散射的影响,在分类过程中使用马尔可夫随机场(MRF)模型,通过考虑相邻像素的统计信息,从图像中合并上下文信息。为了解决特定类别的后向散射作为角度的函数,考虑了一个两级分类器来补偿高度可变的水类别和受影响较小的土地类别。初步结果显示了基于层次MRF的分类器,并与单级MRF和径向基函数(RBF)分类器进行了比较。对于所提供的测试站点,使用分层架构的分类精度仅略有提高,但确实显示出在沿海地区有较大比例的高地和城市土地覆盖类型应用的潜力。
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