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Direct or indirect on-shore hydrocarbon detection methods applied to hyperspectral data in tropical area

机译:应用于热带地区高光谱数据的直接或间接的岸上烃检测方法

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Detecting onshore hydrocarbon is a major topic for both environmental monitoring and exploration. In this work, a hyperspectral image acquired nearby an old oil extraction site in tropical area is analyzed. The area of interest includes a pit filled with bio-degraded heavy oil, surrounded by herbaceous vegetation and many lagoons. First, we focused on methodologies that can detect oil pollution in an unsupervised manner. Based on the assumption that such oil pits are rare events in the image, statistical approach for anomalies detection, derived from the Reed-Xiaoli detector, is used. In order to decrease the number false alarms, some a priori knowledge about the spectral signature of the pits and about the background is introduced. This approach succeeds in detecting the pit with very few false alarms. Hydrocarbon pollution can have an impact on vegetation and leads to change in vegetation (bio)physical parameters (pigments, water content, ...), according to species, pollutant type and exposition time . In order to map the polluted area without any a priori knowledge, several un-supervised classification, including an original method of automatic classification combining unmixing approach and SVM (support Vector Machine) are applied and compared. The results are compared with a partial "ground truth map" that has been derived from visual observations on the field, and with areas of stressed vegetation that have been mapped using combination of specific spectral indices. The classification results are consistent with the ground truth map and the retrieved stressed vegetation areas.
机译:探测陆上烃是环境监测和勘探的主要话题。在这项工作中,分析了热带区域中的旧油提取位点附近获得的高光谱图像。感兴趣的领域包括一个充满生物退化重油的坑,包围草本植物和许多泻湖。首先,我们专注于可以以无人监督的方式检测油污的方法。基于该假设,使用这种油坑在图像中的罕见事件,使用源自芦苇探测器的异常检测的统计方法。为了减少数字误报,介绍了关于凹坑和关于背景的频谱特征的先验知识。这种方法成功地检测到极少的误报的坑。碳氢化合物污染可能对植被产生影响,并导致植被(生物)物理参数(颜料,含水量,......)的变化,根据物种,污染物类型和展览时间。为了在没有任何先验知识的情况下映射污染区域,应用了几种未经监督的分类,包括组合解密方法和SVM(支持向量机)的原始自动分类方法。结果与源自视野中的视觉观测结果的部分“地面真理图”进行了比较,以及使用特定光谱索引的组合映射的压力植被的区域。分类结果与地面真理图和检索到的强调植被区域一致。

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