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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Deep learning based retrieval algorithm for Arctic sea ice concentration from AMSR2 passive microwave and MODIS optical data
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Deep learning based retrieval algorithm for Arctic sea ice concentration from AMSR2 passive microwave and MODIS optical data

机译:AMSR2无源微波和MODIS光学数据的北极海冰浓度深度学习检索算法

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摘要

This study applies deep learning (DL) to retrieve Arctic sea ice concentration (SIC) from AMSR2 data. MODIS-derived SICs are calculated based on spectral unmixing with a new ice/water endmember extraction algorithm that exploits global/local representatives, and then used to train a DL network with AMSR2 data. The resulting SIC maps outperform popular SIC products both regionally and globally. The RMSE of the proposed DL model is 5.19, whereas those of the widely used Bootstrap and ASI-based SIC images are 6.54 and 7.38, respectively, with respect to MODIS-derived SICs at global scale. In particular, our proposed method better describes regions of low-SIC and melting ice in summer, which are generally difficult-to-estimate. As the DL-based model consistently generates accurate SIC values that are not time-or region-dependent, it is considered to be an operational system. Additionally, our SICs can be used to generate initial conditions facilitating development of more accurate climate models.
机译:本研究适用于深度学习(DL)从AMSR2数据中检索北极海冰浓度(SIC)。基于具有新的ICE / Pater Endmember提取算法的频谱解密来计算Modis派生的SICS,用于利用全球/本地代表,然后使用AMSR2数据训练DL网络。由此产生的SIC映射优于地区和全球流行的SIC产品。所提出的DL模型的RMSE是5.19,而广泛使用的引导和基于ASI的SIC图像分别在全球范围内分别为6.54和7.38。特别是,我们的提出方法更好地描述了夏季低SiC和熔化冰的区域,这通常难以估计。随着基于DL的模型一致地生成不是时间或区域的准确的SIC值,它被认为是操作系统。此外,我们的SICS可用于生成促进更准确的气候模型的开发的初始条件。

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