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A region-based GLRT detection of oil spills in SAR images

机译:基于区域的GLRT检测SAR图像中的溢油

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In the study, we propose a fast region-based method for the detection of oil spills in SAR images. The proposed method combines the image segmentation technique and conventional detection theory to improve the accuracy of oil spills detection. From the image statistical characteristics, we first segment the image into regions by using moment preserving method. Then, to get a more integrated segmentation result, we adopt N-nearest-neighbor rule to merge the image regions according to their spatial correlation. Performing the split and merge procedure, we can partition the image into oil-polluted and sea reflection regions, respectively. Based on the segmentation results, we build data models of oil spills and approximate them by using normal distributions. Employing the built oil spills model and the generalized likelihood ratio test (GLRT) detection theory, we derive a closed form solution for oil spills detection. Our proposed method possesses a smaller variance and can reduce the confusion interval in decision. Moreover, we adopt the sample average of image region to reduce the computation complexity. The false alarm rate and oil spills detection probability of the proposed method are derived theoretically. Under the criterion of constant false alarm ratio (CFAR), we determine the threshold of the decision rule automatically. Simulation results performed on ERS2-SAR images have demonstrated the efficiency of the proposed approach.
机译:在研究中,我们提出了一种基于区域的快速方法来检测SAR图像中的溢油。该方法结合了图像分割技术和传统的检测理论,提高了漏油检测的准确性。从图像的统计特性出发,我们首先采用矩保持方法将图像分割成区域。然后,为了获得更综合的分割结果,我们采用N近邻规则将图像区域根据其空间相关性进行合并。执行拆分和合并过程,我们可以将图像分别划分为油污和海反射区域。基于分割结果,我们建立了溢油的数据模型,并使用正态分布对其进行了近似。利用构建的溢油模型和广义似然比检验(GLRT)检测理论,我们得出了溢油检测的封闭形式解决方案。我们提出的方法具有较小的方差,可以减少决策中的混淆间隔。此外,我们采用图像区域的样本平均值来降低计算复杂度。从理论上推导了该方法的误报率和漏油检测概率。在恒定误报率(CFAR)的标准下,我们自动确定决策规则的阈值。在ERS2-SAR图像上执行的仿真结果证明了该方法的有效性。

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