Using Sentinel-2 imagery for detecting oil spills via spatial roughness of mixed normalized difference index

Yaowamal Raphiphan, Suphongsa Khetkeeree
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Abstract

The free and open access optical sensor data from the Sentinel-2 constellation can be used for supporting the operation of oil spill monitoring. It has several spectral bands from visible to shortwave infrared with medium to high resolution, which is suitable for detecting the oil spills. However, the spectral signature of the oil spill often has similar to the surrounding environment. Moreover, it also depends on many parameters, such as sensing angle, sea depth, wave characteristics, etc. In this paper, we propose the method for detecting the oil spill by using the Sentinel-2 images. It is based on the Mixed Normalized Difference Index (MNDI) derived from the Normalized Difference Vegetation Index (NDVI) and the Reversed version of the Normalized Difference Index (NDI) applied for the forest fire monitoring. This index will give the high variation values in the oil spill area, which can estimate the oil spill area by observing its spatial roughness. Four study areas in Saudi Arabia, Greece, Azerbaijan, and Indonesia were used to evaluate the detectable performance compared with the current methods. The visualized results show that our algorithm gives noticeable results and high contrast, including low noise, except the oil spills in Greece.
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基于混合归一化差分指数空间粗糙度的Sentinel-2图像溢油检测
来自Sentinel-2星座的免费和开放的光学传感器数据可用于支持溢油监测的操作。它具有从可见光到短波红外的多个光谱波段,具有中高分辨率,适合于石油泄漏的探测。然而,溢油的光谱特征往往与周围环境相似。此外,它还取决于许多参数,如传感角度、海深、波浪特性等。本文提出了利用Sentinel-2卫星图像进行溢油检测的方法。该模型基于归一化植被指数(NDVI)衍生的混合归一化差异指数(MNDI)和用于森林火灾监测的归一化差异指数(NDI)的反转版本。该指标将给出溢油区域的高变异值,通过观察溢油区域的空间粗糙度来估计溢油区域。沙特阿拉伯、希腊、阿塞拜疆和印度尼西亚的四个研究区域被用来评估与当前方法相比的可检测性能。可视化结果表明,除了希腊的石油泄漏外,我们的算法得到了明显的结果和高对比度,包括低噪声。
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