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Sea slicks classification by Synthetic Aperture Radar

机译:合成孔径雷达对浮油的分类

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An automatic system called OSAD (Oil Spill Automatic Detector), able to discriminate oil spills (OS) from similar features (look-alikes - LA) in SAR images, was developed some years ago. Slick detection is based on a probabilistic method (tuned with a training dataset defined by an expert photointerpreter) evaluating radiometric and geometric characteristics of the areas of interest. OSAD also provides wind field by analyzing SAR images. With the aim to completely classify sea slicks, recently a new procedure has been added. Dark areas are identified on the image and the wind is computed inside and outside for every area: if outside wind value is less than a threshold of 2 m/s it is impossible to evaluate if damping is due to a slick. On the other hand, if outside wind is higher than the threshold and the difference between inside and outside the dark area is lower than 1 m/s we consider this reduction as wind fluctuation. Wind difference higher than 1 m/s is interpreted as damping effect due to a slick; therefore the remaining dark spots are split in OS and LA by OSAD. LA are then analyzed and separated in "biogenic" or "anthropogenic" slicks following an analogous procedure. The system performances has been tested on C-band SAR images, in particular on images having spatial resolution so high to examine details near the coastline; the obtained results corrfirm the efficiency of the algorithm in the classification of four types of signatures usually found on the sea surface.
机译:几年前,开发了一种称为OSAD(溢油自动检测器)的自动系统,该系统可以将溢油(OS)与SAR图像中的相似特征(相似物-LA)区分开。滑动检测是基于一种概率方法(由专家照片解释器定义的训练数据集进行调整),该方法评估感兴趣区域的放射线和几何特征。 OSAD还通过分析SAR图像来提供风场。为了对浮油进行完全分类,最近增加了一个新程序。在图像上识别出暗区,并在每个区域的内部和外部计算风:如果外部风值小于2 m / s的阈值,则无法评估阻尼是否是由光滑引起的。另一方面,如果外部风高于阈值,并且内部和外部暗区之间的差异小于1 m / s,我们将这种减少视为风的波动。高于1 m / s的风速差被认为是由于油滑而产生的阻尼效果。因此,剩余的暗点在OSAD和LA中由OSAD分开。然后按照类似的步骤对洛杉矶进行分析,并分离成“生物源”或“人为源”的浮油。系统性能已经在C波段SAR图像上进行了测试,特别是在具有如此高的空间分辨率以检查海岸线附近的细节的图像上;获得的结果证实了该算法在对通常在海面上发现的四种类型的签名进行分类的效率。

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