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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >A Probability-Based Daytime Algorithm for Sea Fog Detection Using GOES-16 Imagery
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A Probability-Based Daytime Algorithm for Sea Fog Detection Using GOES-16 Imagery

机译:使用GOY-16图像的海雾检测基于概率的白天算法

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摘要

Fog is a hazardous weather event that can endanger navigation, aviation, and transportation. While human has several limitations in detecting and forecasting offshore fog, satellite remote sensing offers cost-effective images. In this study, a probability-based daytime sea fog detection algorithm, applied to geostationary operational environmental satellite (GOES) 16 satellite data over the Grand Banks offshore Eastern Canada, is presented and compared with the National Oceanographic and Atmospheric Administration (NOAA)'s Low Instrument Flight Rules (LIFR) probability map. Initially, clear-sky and ice cloud classes were delineated in the GOES-16 image and then the remaining pixels were assigned a fog probability by conducting small droplet proxy, spatial homogeneity, and temperature difference tests. Moreover, a green band was linearly interpolated using the first three bands of GOES-16 images to generate pseudotrue color composites. The resulting maps were evaluated both during an extended sea fog event and using several statistical measures. The average detection probability for the observed advection fog events was 66% for the proposed method, while that for NOAA's LIFR map was 38%. Furthermore, by thresholding the generated maps at the probability of 60%, the false alarm rate, probability of detection, hit rate, and Hanssen–Kuiper skill score were 0.09, 0.77, 0.83, and 0.68, respectively. The proposed method is operationally being used in this region to detect and monitor sea fog, facilitating safe navigation and aviation. This is the first study that uses GOES-16 for daytime fog detection and discusses a satellite-based solution for fog modeling in Grand Banks, NL.
机译:雾是一种危险的天气事件,可以危害导航,航空和运输。虽然人类在检测和预测海上雾中有几个限制,但卫星遥感提供具有成本效益的图像。在这项研究中,展示了一个基于概率的日间海洋雾检测算法,适用于加拿大东部东部的宏伟银行的16卫星数据,并与国家海洋和大气管理(NOAA)进行了比较。低仪器飞行规则(LIFR)概率图。最初,清除天空和冰云类在GOY-16图像中被描绘,然后通过进行小液滴代理,空间均匀性和温差测试来分配剩余像素雾概率。此外,使用前三个频带的GOY-16图像线性地插入绿色频带以产生假轴颜色复合材料。在延长的海洋雾事件期间和使用几种统计措施,评估所得到的地图。该方法的观察到的平均雾事件的平均检测概率为66%,而NOAA的LIL映射为38%。此外,通过在60%的概率下产生所产生的地图,误报率,检测概率,命中率和Hanssen-Kuiper技能得分分别为0.09,0.77,0.83和0.68。该地区在该地区使用该方法以检测和监控海雾,促进安全导航和航空。这是第一项研究,它用于白天雾检测,并讨论了在Grand Banks中的雾化建模的基于卫星建模的解决方案。

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