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首页> 外文期刊>International Journal of Physical Sciences >Comparison between Mahalanobis classification and neural network for oil spill detection using RADARSAT-1 SAR data
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Comparison between Mahalanobis classification and neural network for oil spill detection using RADARSAT-1 SAR data

机译:利用RADARSAT-1 SAR数据进行Mahalanobis分类和神经网络进行溢油检测的比较

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Oil spill or leakage into waterways and ocean spreads very rapidly due to the action of wind and currents. The study of the behavior and movement of these oil spills in sea had become imperative in describing a suitable management plan for mitigating the adverse impacts arising from such accidents. But the inherent difficulty of discriminating between oil spills and look-alikes is a main challenge with Synthetic Aperture Radar (SAR) satellite data and this is a drawback, which makes it difficult to develop a fully automated algorithm for detection of oil spill. As such, an automatic algorithm with a reliable confidence estimator of oil spill would be highly desirable. The main objective of this work is to develop comparative automatic detection procedures for oil spill pixels in multimode (Standard beam S2, Wide beam W1 and fine beam F1) RADARSAT-1 SAR satellite data that were acquired in the Malacca Straits using two algorithms namely, post supervised classification, and neural network (NN) for oil spill detection. The results show that NN is the best indicator for oil spill detection as it can discriminate oil spill from its surrounding such as look-alikes, sea surface and land. The receiver operator characteristic (ROC) is used to determine the accuracy of oil spill detection from RADARSAT-1 SAR data. The results show that oil spills, lookalikes, and sea surface roughness are perfectly discriminated with an area difference of 20% for oil spill, 35% look–alikes, 15% land and 30% for the sea roughness. The NN shows higher performance in automatic detection of oil spill in RADARSAT-1 SAR data as compared toMahalanobis classificationwith standard deviation of 0.12. It can therefore be concluded that NN algorithm is an appropriate algorithm for oil spill automatic detection and W1 beam mode is appropriate for oil spill and look-alikes discrimination and detection.
机译:由于风和海流的作用,溢油或泄漏到水道和海洋中的扩散非常迅速。这些海上溢油的行为和运动的研究对于描述减轻此类事故造成的不利影响的适当管理计划已成为当务之急。但是,使用合成孔径雷达(SAR)卫星数据来区分溢油和外观相似的固有困难是一个主要挑战,这是一个缺点,这使得很难开发出用于检测溢油的全自动算法。这样,非常需要具有可靠的漏油置信度估计器的自动算法。这项工作的主要目的是为在马六甲海峡获取的多模(标准射束S2,宽射束W1和细射束F1)RADARSAT-1 SAR卫星数据开发比较自动检测程序,以使用两种算法,即后监督分类,以及用于漏油检测的神经网络(NN)。结果表明,NN是漏油检测的最佳指标,因为它可以将漏油与周围环境(如外观,海面和陆地)区分开。接收器操作员特征(ROC)用于根据RADARSAT-1 SAR数据确定漏油检测的准确性。结果表明,溢油,相似物和海面粗糙度可以完美地区分,溢油的面积差为20%,相似度为35%,陆地为15%,海洋粗糙度为30%。与马哈拉诺比斯分类法(标准偏差为0.12)相比,NN在RADARSAT-1 SAR数据中的漏油自动检测中表现出更高的性能。因此,可以得出结论,NN算法是适用于溢油自动检测的合适算法,W1光束模式适用于溢油和相似识别和检测。

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