Super-Resolution of PROBA-V Images Using Convolutional Neural Networks
ESA's PROBA-V Earth observation satellite enables us to monitor our planet at a large scale, studying the interaction between vegetation and climate and provides guidance for important decisions on our common global future. However, the interval at which high resolution images are recorded span...
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Zusammenfassung: | ESA's PROBA-V Earth observation satellite enables us to monitor our planet at
a large scale, studying the interaction between vegetation and climate and
provides guidance for important decisions on our common global future. However,
the interval at which high resolution images are recorded spans over several
days, in contrast to the availability of lower resolution images which is often
daily. We collect an extensive dataset of both, high and low resolution images
taken by PROBA-V instruments during monthly periods to investigate Multi Image
Super-resolution, a technique to merge several low resolution images to one
image of higher quality. We propose a convolutional neural network that is able
to cope with changes in illumination, cloud coverage and landscape features
which are challenges introduced by the fact that the different images are taken
over successive satellite passages over the same region. Given a bicubic
upscaling of low resolution images taken under optimal conditions, we find the
Peak Signal to Noise Ratio of the reconstructed image of the network to be
higher for a large majority of different scenes. This shows that applied
machine learning has the potential to enhance large amounts of previously
collected earth observation data during multiple satellite passes. |
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DOI: | 10.48550/arxiv.1907.01821 |