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Oil Spill Detection from TerraSAR-X Dual-polarized Images using Artificial Neural Network

机译:使用人工神经网络从TerraSAR-X双极化图像中检测漏油

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Marine pollution from oil spills destroys ecosystems. In order to minimize the damage, it is important to fast cleanup it after predicting how the oil will spread. In order to predict the spread of oil spill, remote sensing technique, especially radar satellite image is widely used. In previous studies, only the back-scattering value is generally used for the detection of oil spill. However, in this study, oil spill was detected by applying ANN (Artificial Neural Network) as input data from the back-scattering value of the radar image as well as the phase information extracted from the dual polarization. In order to maximize the efficiency of oil spill detection using a back-scattering value, the speckle noise acting as an error factor should be removed first. NL-means filter was applied to multi-look image to remove it without smoothing of spatial resolution. In the coherence image, the sea has a high value and the oil spill area has a low value due to the scattering characteristics of the pulse. In order to using the characteristics of radar image, training sample was set up from NL-means filtered images(HH, VV) and coherence image, and ANN was applied to produce probability map of oil spill. In general, the value was 0.4 or less in the case of the sea, and the value was mainly in the range of 0.7 to 0.9 in the oil spill area. Using coherence images generated from different polarizations showed better detection results for relatively thin oil spill areas such as oil slick or oil sheen than using back-scattering information alone. It is expected that if the information about the look-alike of oil spill such as algae, internal wave and rainfall area is provided, the probability map can be produced with higher accuracy.
机译:漏油造成的海洋污染破坏了生态系统。为了最大程度地减少损坏,在预测油的扩散方式之后快速清理它很重要。为了预测漏油事件的蔓延,广泛使用了遥感技术,尤其是雷达卫星图像。在以前的研究中,通常仅使用反向散射值来检测漏油。但是,在这项研究中,通过应用ANN(人工神经网络)作为输入数据,从雷达图像的反向散射值以及从双极化提取的相位信息中检测到了溢油。为了使使用反向散射值的漏油检测效率最大化,应首先消除作为误差因子的斑点噪声。 NL-means滤镜应用于多视点图像,以在不平滑空间分辨率的情况下将其删除。在相干图像中,由于脉冲的散射特性,海洋具有较高的值,而溢油面积具有较低的值。为了利用雷达图像的特征,从NL均值滤波图像(HH,VV)和相干图像中建立训练样本,并应用人工神经网络生成溢油概率图。通常,在大海的情况下,该值为0.4以下,在溢油区域中,该值主要在0.7至0.9的范围内。与仅使用反向散射信息相比,使用从不同极化产生的相干图像显示出相对较薄的溢油区域(如浮油或油亮)的检测结果更好。期望如果提供有关诸如海藻,内浪和降雨面积之类的漏油事件的信息,则可以以更高的精度生成概率图。

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