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Recurrent neural networks for atmospheric noise removal from InSAR time series with missing values

机译:缺失值的令人反复性神经网络,从缺失值中序列

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摘要

Atmospheric noise is one of the primary challenges for improving the accuracy of deformation estimation by InSAR technologies. Temporal filtering methods, like Gaussian filtering, are commonly used to remove the atmospheric noise from the InSAR time series. Such low-pass filters can effectively suppress stochastic noise. Yet, its performance heavily depends on the parameter settings and can easily be affected by the seasonal variations and missing values presented in the InSAR time series. Recurrent neural networks (RNNs) have been successfully adapted in many time series or sequential data applications. Still, there is little work on exploiting the ability of RNNs for modeling InSAR time series. This paper proposes a bidirectional RNN with gated recurrent units (GRU) for removing the atmospheric noise from the InSAR time series. A physical-based method of synthesizing InSAR time series is developed to tackle the lack of training data problem. The proposed GRU model integrates a GRU-D layer for handling the missing values, and all the model components are jointly trained to produce the denoised time series. Besides, we introduce the seasonal factor (SF) signal as an auxiliary input to help the model better capture the seasonality of the deformation and improve the denoising results. Experiments on synthetic datasets and HKIA real-world datasets demonstrate that our proposed GRU model achieves better denoising performance than Gaussian filtering and other RNN baseline models.
机译:大气噪声是提高Insar Technologies的变形估计准确性的主要挑战之一。像高斯滤波一样的时间过滤方法通常用于从Insar时间序列中移除大气噪声。这种低通滤波器可以有效地抑制随机噪声。然而,其性能大量取决于参数设置,并且可以很容易地受到漫步时间序列中呈现的季节变化和缺失值的影响。经常性的神经网络(RNNS)已在许多时间序列或顺序数据应用中成功调整。尽管如此,利用RNN为insar时间序列的能力而采取了很少的努力。本文提出了具有门控复发单元(GU)的双向RNN,用于从Insar时间序列中除去大气噪声。开发了一种合成INSAR时间序列的基于物理的方法来解决缺乏培训数据问题。所提出的GRU模型集成了用于处理缺失值的GRU-D层,并且所有模型组件都是共同训练的,以产生去噪时间序列。此外,我们将季节性因子(SF)信号引入辅助输入,以帮助模型更好地捕获变形的季节性并改善去噪结果。合成数据集和HKIA现实世界数据集的实验表明,我们所提出的GRU模型比高斯滤波和其他RNN基线模型实现更好的去噪。

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