Efficient data-driven gap filling of satellite image time series using
deep neural networks with partial convolutions
- URL: http://arxiv.org/abs/2208.08781v1
- Date: Thu, 18 Aug 2022 11:32:04 GMT
- Title: Efficient data-driven gap filling of satellite image time series using
deep neural networks with partial convolutions
- Authors: Marius Appel
- Abstract summary: This paper shows how three-dimensional 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 time series of quasi-global carbon monoxide observations from the Sentinel-5P satellite.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- 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 monoxide observations from
the Sentinel-5P satellite. Prediction errors were comparable to two considered
statistical approaches while computation times for predictions were up to three
orders of magnitude faster, making the approach applicable to process large
amounts of satellite data. Partial convolutions can be added as layers to other
types of neural networks, making it relatively easy to integrate with existing
deep learning models. However, the approach does not quantify prediction errors
and further research is needed to understand and improve model transferability.
The implementation of spatiotemporal partial convolutions and the U-Net-like
model is available as open-source software.
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