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Geospatial modelling of metocean and environmental ancillary data for the oil spill probability assessment in SAR images

机译:海洋和环境辅助数据的地理空间建​​模,用于SAR图像中的溢油概率评估

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The confidence level of oil spill detections in satellite Synthetic Aperture Radar (SAR) imagery requires the analysis of many different factors. Unfortunately, oil slicks are not the only phenomena which can appear as a dark feature in a SAR image. These include a number of parameters like wind speed, currents, internal waves, upwelling sea areas, algae bloom, mixing water areas, et cetera. These phenomena are called look-alikes. The largest challenge in detecting oil spills in SAR images remains in the accurate discrimination between oil spills and look-alikes.rnThis study introduces the vantages of using geospatial analysis of various metocean data (e.g. wind speed and direction, sea surface temperature, wave direction, ocean colour data) and environmental ancillary data (e.g. vessel traffic, port locations) as a supplementary information source for the oil spill probability assessment in SAR imagery. The analysed data exists in different formats with different value scales. In addition, the parameters of the metocean data analysis are not equally important for a reliability of oil spill detection. The weight of metocean parameters depends on the impact of natural phenomena on SAR systems (e.g. wind and currents have pro rata more influence on the probability than sea surface temperature and chlorophyll-a) and the area of interest (e.g. chlorophyll-a is a more important value for the Baltic Sea than for the Mediterranean Sea).rnThe derived oil spill probability categorisation based on the weighted analysis of metocean environmental ancillary data could be a useful tool for authorities for an efficient planning of cost-intensive verification flights.
机译:卫星合成孔径雷达(SAR)图像中漏油检测的置信度要求分析许多不同因素。不幸的是,浮油并不是SAR图像中可能会显示为深色特征的唯一现象。这些参数包括许多参数,例如风速,洋流,内部波浪,上升的海域,藻类开花,混合水域等。这些现象称为相像。在SAR图像中检测溢油的最大挑战仍然是如何准确区分溢油和相似物。rn本研究介绍了对各种海星数据(例如风速和风向,海面温度,波浪方向,海洋颜色数据)和环境辅助数据(例如船舶交通,港口位置),作为SAR图像中溢油概率评估的补充信息源。分析的数据以不同的格式存在,具有不同的价值尺度。另外,对于漏油检测的可靠性,海洋数据分析的参数并不重要。海洋参数的权重取决于自然现象对SAR系统的影响(例如,风和洋流对概率的影响比海面温度和叶绿素-a的影响更大)和目标区域(例如,叶绿素-a的影响更大)。 (波罗的海比地中海具有更重要的价值)。rn基于海洋环境辅助数据的加权分析得出的溢油概率分类可以为当局有效计划成本密集型验证飞行提供有用的工具。

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