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Automatic oil spill detection in TerraSAR-X data using multi-contextual Markov modeling on irregular graphs

机译:使用不规则图形上的多上下文Markov建模自动检测TerraSAR-X数据中的溢油

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This paper describes the workflow of an automatic near-real time oil spill detection approach using single-polarized high resolution X-Band Synthetic Aperture Radar satellite data. Dark formations on the water surface are classified in a completely unsupervised way using an automatic tile-based thresholding procedure. The derived global threshold value is used for the initialization of a hybrid multi-contextual Markov image model which integrates scale-dependent and spatial contextual information on irregular hierarchical graph structures into the segment-based labeling process of slick-covered and slick-free water surfaces. Experimental investigations performed on TerraSAR-X ScanSAR data acquired during large-scale oil pollutions in the Gulf of Mexico in May 2010 confirm the effectiveness of the proposed method with respect to accuracy and computational effort.
机译:本文介绍了使用单极化高分辨率X波段合成孔径雷达卫星数据的自动近实时溢油检测方法的工作流程。使用基于图块的自动阈值处理,以完全不受监督的方式对水面上的暗层进行分类。导出的全局阈值用于初始化混合多上下文马尔可夫图像模型,该模型将不规则分层图结构上的比例相关和空间上下文信息集成到光滑覆盖和光滑表面的基于片段的标记过程中。对2010年5月在墨西哥湾发生的大规模石油污染期间获取的TerraSAR-X ScanSAR数据进行的实验研究证实了该方法在准确性和计算量方面的有效性。

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