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Ocean Color Net (OCN) for the Barents Sea

机译:海洋彩网(OCN)为野人海

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Over recent years, rapid environmental changes in the Arctic and subarctic regions have caused significant alterations in the ecosystem structure and seasonality, including the primary productivity of the Barents Sea. This work aims at improving methodology for studying these features, by estimating chlorophyll-a (chl-a) concentrations in the transitional Barents Sea by remotely sensing its optical properties, in order to better understand the large-scale algal bloom dynamics in the region. The in-situ measurements of chl-a are collected from the year 2016 to 2018 over a wide area of the Barents Sea to cover the spatial and temporal variations in chl-a concentration. Optical images of the Barents Sea are captured by the Multi-Spectral Imager Instrument on Sentinel-2. Using these remotely sensed optical images and the in-situ measurements, we propose a match-up dataset creation method based on the distribution of the remotely sensed reflectance spectra. Different Machine Learning (ML) techniques are assessed to estimate concentration of chl-a using the match-up dataset. Most of these techniques have not been investigated before in the subarctic region such as the Barents Sea. The Ocean Color Net (OCN) regression model proposed in this study has outperformed other ML-based techniques including Support Vector Regression, Gaussian Process Regression, and the globally trained Case-2 Regional/Coast Colour (C2RCC) processing chain model C2RCC-Nets, as well as empirical methods based on spectral band ratios. A wide range of experiments has demonstrated the effectiveness of the proposed OCN for ocean color remote sensing in the subarctic region. The performance of the OCN is also presented spatially by computing chl-a maps in the Barents Sea.
机译:近年来,北极和亚神地区的快速环境变化导致了生态系统结构和季节性的显着改变,包括致欢迎的海海的主要生产力。该工作旨在通过远程感测其光学性质来估计过渡性小海浪中的叶绿素-A(CHL-A)浓度来改善研究这些特征的方法,以便更好地了解该区域的大规模藻类绽放动态。从2016年至2018年在一年内收集了CHL-A的原位测量,在各种各样的小面积上,以覆盖CHL-A浓度的空间和时间变化。 Mayse Sea的光学图像由Sentinel-2上的多光谱成像器仪器捕获。使用这些远程感测光图像和原位测量,我们提出了一种基于远程感测反射光谱的分布的匹配数据集创建方法。评估不同的机器学习(ML)技术以使用匹配数据集估计CHL-A的浓度。在亚曲率区域之类的诸如鲸类区域之前之前尚未研究这些技术中的大多数。本研究提出的海洋彩网(OCN)回归模型表现出基于ML的其他基于ML的技术,包括支持向量回归,高斯过程回归和全球培训的案例-2区域/海岸颜色(C2RCC)处理链模型C2RCC网,以及基于光谱带比的经验方法。各种实验表明了亚曲率区域中所提出的OCN用于海洋颜色遥感的有效性。 OCN的性能也通过计算CHL-A地图在海藻中的映射来呈现。

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