首页> 外文会议>International Conference on Sensors Models in Remote Sensing Photogrammetry >DARK SPOT DETECTION USING INTENSITY AND THE DEGREE OF POLARIZATION IN FULLY POLARIMETRIC SAR IMAGES FOR OIL POLUTION MONITORING
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DARK SPOT DETECTION USING INTENSITY AND THE DEGREE OF POLARIZATION IN FULLY POLARIMETRIC SAR IMAGES FOR OIL POLUTION MONITORING

机译:使用强度和完全偏振的SAR图像中的强度和极化程度的暗点检测进行加油监测

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Oil spill surveillance is of great environmental and economical interest, directly contributing to improve environmental protection. Monitoring of oil spills using synthetic aperture radar (SAR) has received a considerable attention over the past few years, notably because of SAR data abilities like all-weather and day-and-night capturing. The degree of polarization (DoP) is a less computationally complex quantity characterizing a partially polarized electromagnetic field. The key to the proposed approach is making use of DoP as polarimetric information besides intensity ones to improve dark patches detection as the first step of oil spill monitoring. In the proposed approach first simple intensity threshold segmentation like Otsu method is applied to the image. Pixels with intensities below the threshold are regarded as potential dark spot pixels while the others are potential background pixels. Second, the DoP of potential dark spot pixels is estimated. Pixels with DoP below a certain threshold are the real dark-spot pixels. Choosing the threshold is a critical and challenging step. In order to solve choosing the appropriate threshold, we introduce a novel but simple method based on DoP of potential dark spot pixels. Finally, an area threshold is used to eliminate any remaining false targets. The proposed approach is tested on L band NASA/JPL UAVSAR data, covering the Deepwater Horizon oil spill in the Gulf of Mexico. Comparing the obtained results from the new method with conventional approaches like Otsu, K-means and GrowCut shows better achievement of the proposed algorithm. For instance, mean square error (MSE) 65%, Overall Accuracy 20% and correlation 40% are improved.
机译:石油泄漏监测是环境和经济的兴趣,直接有助于改善环保。石油泄漏监测使用合成孔径雷达(SAR)已经收到了相当多的关注,在过去的几年中,由于SAR数据的能力一样全天候和日间和夜间拍摄的显着。偏振度(DOP)是一种较低的计算上复杂的量,其特征在于部分偏振电磁场。除了强度的情况之外,所提出的方法的关键是利用DOP作为极化信息,以改善暗贴片检测作为漏油监测的第一步。在所提出的方法中,第一简单的强度阈值分段,如OTSU方法应用于图像。具有低于阈值的强度的像素被认为是潜在的暗点像素,而其他是潜在的背景像素。其次,估计潜在的暗点像素的DOP。 DOP低于某个阈值的像素是真实的黑点像素。选择阈值是一个关键和具有挑战性的步骤。为了解决选择适当的阈值,我们介绍了一种基于潜在暗点像素的DOP的新颖而简单的方法。最后,使用区域阈值来消除任何剩余的虚假目标。所提出的方法在L频段NASA / JPL无人机数据上进行了测试,涵盖墨西哥湾的深水地平线漏油。将获得的结果与常规方法相比,如Otsu,K-Means和Carccut等常规方法显示出更好地实现所提出的算法。例如,均方误差(MSE)65%,总体精度20%和相关40%的相关性得到改善。

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