首页> 外文期刊>International Journal of Physical Sciences >Discrimination between oil spill and look-alike using fractal dimension algorithm from RADARSAT-1 SAR and AIRSAR/POLSAR data
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Discrimination between oil spill and look-alike using fractal dimension algorithm from RADARSAT-1 SAR and AIRSAR/POLSAR data

机译:使用RADARSAT-1 SAR和AIRSAR / POLSAR数据的分形维算法区分漏油和相似物体

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This work utilizes a modification of the formula of the fractal box counting dimension in which a convoluted line of slick embedded in SAR data was divided into small boxes. The method is based on the utilization of theprobability distribution formula in the fractal box count. The purpose of this method is to use it for the discrimination of oil spill areas from the surrounding features, for example, sea surface and look-alikes in SAR data, that is, RADARSAT-1 SAR S2 mode and AIRSAR/POLSAR data. The results show that the modified formula of the fractal box counting dimension can discriminate between oil spills and look-alike areas. The low wind area has the highest fractal dimension peak of 2.9, as compared to the oil slick and the surrounding rough sea. Further, modified formula of fractal box counting dimension is also able to detect look-alikes and low wind zone areas in AIRSAR/POLSAR data. It is interesting to find out that oil spill is absent in AIRSAR/POLSAR data. Both SAR data have a maximum error standard deviation of 0.45, which performs with fractal dimension value of 2.9. In conclusion, modification formula of fractal box counting dimension is a promising technique for oil spill and look-alikes automatic discrimination in different sensor of SAR data.
机译:这项工作利用了对分形盒计数维数公式的修改,其中将嵌入SAR数据中的浮油绕线分成了小盒。该方法基于分形盒计数中概率分布公式的利用。此方法的目的是将其用于从周围特征(例如,SAR数据(即RADARSAT-1 SAR S2模式和AIRSAR / POLSAR数据)中的海面和相似区域)中识别出溢油区域。结果表明,分形盒计数维数的修正公式可以区分溢油和相似区域。与浮油和周围的波涛汹涌的大海相比,低风地区的分形维数峰值最高,为2.9。此外,分形盒计数维数的修改公式还能够检测AIRSAR / POLSAR数据中的相似点和低风区域。有趣的是,AIRSAR / POLSAR数据中没有漏油现象。两种SAR数据的最大误差标准偏差均为0.45,分形维值为2.9。综上所述,分形盒计数维数的修正公式是一种有效的漏油技术,在不同的SAR数据传感器中具有相似的自动判别功能。

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