2022
DOI: 10.48550/arxiv.2208.08781
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Efficient data-driven gap filling of satellite image time series using deep neural networks with partial convolutions

Abstract: The abundance of gaps in satellite image time series often complicates the application of deep learning models such as convolutional neural networks for spatiotemporal modeling. Based on previous work in computer vision on image inpainting, this paper shows how three-dimensional spatiotemporal partial convolutions can be used as layers in neural networks to fill gaps in satellite image time series. To evaluate the approach, we apply a U-Net-like model on incomplete image time series of quasi-global carbon mono… Show more

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