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利用多频合成孔径雷达、多光谱图像和模糊森林与随机森林方法检测石油污染对植被的影响。

Detection of oil pollution impacts on vegetation using multifrequency SAR, multispectral images with fuzzy forest and random forest methods.

机构信息

Centre for Landscape and Climate Research, School of Geography, Geology and Environment, University of Leicester, Leicester, United Kingdom; Department of Strategic Space Applications, National Space Research and Development Agency, (NASRDA), Abuja, Nigeria.

Centre for Landscape and Climate Research, School of Geography, Geology and Environment, University of Leicester, Leicester, United Kingdom; Centre for Landscape and Climate Research, Space Park Leicester, University of Leicester, United Kingdom.

出版信息

Environ Pollut. 2020 Jan;256:113360. doi: 10.1016/j.envpol.2019.113360. Epub 2019 Oct 11.

Abstract

Oil pollution harms terrestrial ecosystems. There is an urgent requirement to improve on existing methods for detecting, mapping and establishing the precise extent of oil-impacted and oil-free vegetation. This is needed to quantify existing spill extents, formulate effective remediation strategies and to enable effective pipeline monitoring strategies to identify leakages at an early stage. An effective oil spill detection algorithm based on optical image spectral responses can benefit immensely from the inclusion of multi-frequency Synthetic Aperture Radar (SAR) data, especially when the effect of multi-collinearity is sufficiently reduced. This study compared the Fuzzy Forest (FF) and Random Forest (RF) methods in detecting and mapping oil-impacted vegetation from a post spill multispectral optical sentinel 2 image and multifrequency C and X Band Sentinel - 1, COSMO Skymed and TanDEM-X SAR images. FF and RF classifiers were employed to discriminate oil-spill impacted and oil-free vegetation in a study area in Nigeria. Fuzzy Forest uses specific functions for the selection and use of uncorrelated variables in the classification process to yield an improved result. This method proved an efficient variable selection technique addressing the effects of high dimensionality and multi-collinearity, as the optimization and use of different SAR and optical image variables generated more accurate results than the RF algorithm in densely vegetated areas. An Overall Accuracy (OA) of 75% was obtained for the dense (Tree Cover Area) vegetation, while cropland and grassland areas had 59.4% and 65% OA respectively. However, RF performed better in Cropland areas with OA = 75% when SAR-optical image variables were used for classification, while both methods performed equally well in Grassland areas with OA = 65%. Similarly, significant backscatter differences (P < 0.005) were observed in the C-Band backscatter sample mean of polluted and oil-free TCA, while strong linear associations existed between LAI and backscatter in grassland and TCA. This study demonstrates that SAR based monitoring of petroleum hydrocarbon impacts on vegetation is feasible and has high potential for establishing oil-impacted areas and oil pipeline monitoring.

摘要

石油污染危害陆地生态系统。因此,迫切需要改进现有的检测、绘制和确定受油影响和无油植被的精确范围的方法。这是为了量化现有的溢油范围,制定有效的补救策略,并能够实施有效的管道监测策略,以便在早期发现泄漏。基于光学图像光谱响应的有效溢油检测算法可以从包括多频合成孔径雷达 (SAR) 数据中受益匪浅,特别是当充分减少多共线性的影响时。本研究比较了模糊森林 (FF) 和随机森林 (RF) 方法在检测和绘制尼日利亚研究区域溢油后多光谱光学哨兵 2 图像和多频 C 波段和 X 波段 Sentinel-1、COSMO Skymed 和 TanDEM-X SAR 图像中的受油影响和无油植被。FF 和 RF 分类器用于在尼日利亚的一个研究区域中区分溢油影响和无油植被。模糊森林在分类过程中使用特定的函数来选择和使用不相关的变量,从而产生更好的结果。该方法证明是一种有效的变量选择技术,可解决高维性和多共线性的影响,因为优化和使用不同的 SAR 和光学图像变量比 RF 算法在植被茂密的区域产生更准确的结果。茂密(树木覆盖区)植被的总体精度 (OA) 为 75%,而耕地和草地的 OA 分别为 59.4%和 65%。然而,当使用 SAR-光学图像变量进行分类时,RF 在耕地区域的性能更好,OA 为 75%,而在草地区域,两种方法的 OA 均为 65%。同样,在受污染和无油 TCA 的 C 波段后向散射样本均值中观察到显著的后向散射差异 (P < 0.005),而在草地和 TCA 中,LAI 与后向散射之间存在很强的线性关系。本研究表明,基于 SAR 的对植被中石油烃影响的监测是可行的,并且具有确定受油影响区域和石油管道监测的巨大潜力。

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