Back to Search Start Over

HighRes-net: Recursive Fusion for Multi-Frame Super-Resolution of Satellite Imagery

Authors :
Deudon, Michel
Kalaitzis, Alfredo
Goytom, Israel
Arefin, Md Rifat
Lin, Zhichao
Sankaran, Kris
Michalski, Vincent
Kahou, Samira E.
Cornebise, Julien
Bengio, Yoshua
Publication Year :
2020

Abstract

Generative deep learning has sparked a new wave of Super-Resolution (SR) algorithms that enhance single images with impressive aesthetic results, albeit with imaginary details. Multi-frame Super-Resolution (MFSR) offers a more grounded approach to the ill-posed problem, by conditioning on multiple low-resolution views. This is important for satellite monitoring of human impact on the planet -- from deforestation, to human rights violations -- that depend on reliable imagery. To this end, we present HighRes-net, the first deep learning approach to MFSR that learns its sub-tasks in an end-to-end fashion: (i) co-registration, (ii) fusion, (iii) up-sampling, and (iv) registration-at-the-loss. Co-registration of low-resolution views is learned implicitly through a reference-frame channel, with no explicit registration mechanism. We learn a global fusion operator that is applied recursively on an arbitrary number of low-resolution pairs. We introduce a registered loss, by learning to align the SR output to a ground-truth through ShiftNet. We show that by learning deep representations of multiple views, we can super-resolve low-resolution signals and enhance Earth Observation data at scale. Our approach recently topped the European Space Agency's MFSR competition on real-world satellite imagery.<br />Comment: 15 pages, 5 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2002.06460
Document Type :
Working Paper