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Cloud identification and classification from high spectral resolution data in the far infrared and mid-infrared

机译:从远红外线和中红外线的高光谱分辨率数据识别和分类

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A new cloud identification and classification algorithm named CIC is presented. CIC is a machine learning algorithm, based on principal component analysis, able to perform a cloud detection and scene classification using a univariate distribution of a similarity index that defines the level of closeness between the analysed spectra and the elements of each training dataset. CIC is tested on a widespread synthetic dataset of high spectral resolution radiances in the far- and mid-infrared part of the spectrum, simulating measurements from the Fast Track 9 mission FORUM (Far-Infrared Outgoing Radiation Understanding and Monitoring), competing for the ESA Earth Explorer programme, which is currently (2018 and 2019) undergoing industrial and scientific Phase?A studies. Simulated spectra are representatives of many diverse climatic areas, ranging from the tropical to polar regions. Application of the algorithm to the synthetic dataset provides high scores for clear or cloud identification, especially when optimisation processes are performed. One of the main results consists of pointing out the high information content of spectral radiance in the far-infrared region of the electromagnetic spectrum to identify cloudy scenes, specifically thin cirrus clouds. In particular, it is shown that hit scores for clear and cloudy spectra increase from about 70 % to 90 % when far-infrared channels are accounted for in the classification of the synthetic dataset for tropical regions.
机译:呈现了名为CIC的新云识别和分类算法。 CIC是一种基于主成分分析的机器学习算法,能够使用相似索引的单变量分布来执行云检测和场景分类,该相似性指数定义分析的光谱与每个训练数据集的元素之间的接近程度。 CIC在光谱的远程和中红外部分的高光谱分辨率广域的广泛合成数据集上进行了测试,模拟快速轨道9 Mission论坛(远红外传出辐射了解和监测)的测量,竞争ESA地球探险家计划,目前(2018年和2019年)正在进行工业和科学阶段?一项研究。模拟光谱是许多不同气候区域的代表,从热带到极地区域。算法在合成数据集中的应用提供了清晰或云标识的高分,特别是当执行优化过程时。主要结果之一包括指出电磁谱的远红外区域中的光谱辐射的高信息含量,以识别多云的场景,特别是薄的卷云。特别是,当远红外通道占热带地区的合成数据集的分类时,透明和多云光谱的命中得分从约70%增加到90%。

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