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DINCAE 1.0: a convolutional neural network with error estimates to reconstruct sea surface temperature satellite observations

机译:DINCAE 1.0:一种卷积神经网络,具有重建海表面温度卫星观测的误差估计

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A method to reconstruct missing data in sea surface temperature data using a neural network is presented. Satellite observations working in the optical and infrared bands are affected by clouds, which obscure part of the ocean underneath. In this paper, a neural network with the structure of a convolutional auto-encoder is developed to reconstruct the missing data based on the available cloud-free pixels in satellite images. Contrary to standard image reconstruction with neural networks, this application requires a method to handle missing data (or data with variable accuracy) in the training phase. The present work shows a consistent approach which uses the satellite data and its expected error variance as input and provides the reconstructed field along with its expected error variance as output. The neural network is trained by maximizing the likelihood of the observed value. The approach, called DINCAE (Data INterpolating Convolutional Auto-Encoder), is applied to a 25-year time series of Advanced Very High Resolution Radiometer (AVHRR) sea surface temperature data and compared to DINEOF (Data INterpolating Empirical Orthogonal Functions), a commonly used method to reconstruct missing data based on an EOF (empirical orthogonal function) decomposition. The reconstruction error of both approaches is computed using cross-validation and in situ observations from the World Ocean Database. DINCAE results have lower error while showing higher variability than the DINEOF reconstruction.
机译:呈现了使用神经网络在海面温度数据中重建缺失数据的方法。在光学和红外条带中工作的卫星观察受到云的影响,云层掩盖了下面的海洋。在本文中,开发了一种具有卷积自动编码器结构的神经网络,以基于卫星图像中的可用云像素重建缺失的数据。与标准图像重建与神经网络相反,该应用程序需要一种方法来在训练阶段处理缺失的数据(或具有可变精度的数据)。本工作显示了一种一致的方法,它使用卫星数据及其预期误差方差作为输入,并提供重建的字段以及其预期的误差方差作为输出。通过最大化观察值的可能性来训练神经网络。称为DINCAE(数据插值卷积自动编码器)的方法应用于25年的高级高分辨率辐射计(AVHRR)海面温度数据,并与狄尾(内插经验正交功能)进行比较,通常使用方法基于EOF(经验正交函数)分解来重建缺失数据。使用来自世界海洋数据库的交叉验证和原位观测来计算两种方法的重建误差。 DINCAE结果的误差较低,同时显示比狄尾重建更高的可变性。

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